rknn-toolkit2-v2.1.0-2024-08-08
/
rknpu2
/examples
/3rdparty
/opencv
/opencv-linux-aarch64
/include
/opencv2
/photo.hpp
/*M/////////////////////////////////////////////////////////////////////////////////////// | |
// | |
// IMPORTANT: READ BEFORE DOWNLOADING, COPYING, INSTALLING OR USING. | |
// | |
// By downloading, copying, installing or using the software you agree to this license. | |
// If you do not agree to this license, do not download, install, | |
// copy or use the software. | |
// | |
// | |
// License Agreement | |
// For Open Source Computer Vision Library | |
// | |
// Copyright (C) 2000-2008, Intel Corporation, all rights reserved. | |
// Copyright (C) 2008-2012, Willow Garage Inc., all rights reserved. | |
// Third party copyrights are property of their respective owners. | |
// | |
// Redistribution and use in source and binary forms, with or without modification, | |
// are permitted provided that the following conditions are met: | |
// | |
// * Redistribution's of source code must retain the above copyright notice, | |
// this list of conditions and the following disclaimer. | |
// | |
// * Redistribution's in binary form must reproduce the above copyright notice, | |
// this list of conditions and the following disclaimer in the documentation | |
// and/or other materials provided with the distribution. | |
// | |
// * The name of the copyright holders may not be used to endorse or promote products | |
// derived from this software without specific prior written permission. | |
// | |
// This software is provided by the copyright holders and contributors "as is" and | |
// any express or implied warranties, including, but not limited to, the implied | |
// warranties of merchantability and fitness for a particular purpose are disclaimed. | |
// In no event shall the Intel Corporation or contributors be liable for any direct, | |
// indirect, incidental, special, exemplary, or consequential damages | |
// (including, but not limited to, procurement of substitute goods or services; | |
// loss of use, data, or profits; or business interruption) however caused | |
// and on any theory of liability, whether in contract, strict liability, | |
// or tort (including negligence or otherwise) arising in any way out of | |
// the use of this software, even if advised of the possibility of such damage. | |
// | |
//M*/ | |
/** | |
@defgroup photo Computational Photography | |
@{ | |
@defgroup photo_denoise Denoising | |
@defgroup photo_hdr HDR imaging | |
This section describes high dynamic range imaging algorithms namely tonemapping, exposure alignment, | |
camera calibration with multiple exposures and exposure fusion. | |
@defgroup photo_clone Seamless Cloning | |
@defgroup photo_render Non-Photorealistic Rendering | |
@defgroup photo_c C API | |
@} | |
*/ | |
namespace cv | |
{ | |
//! @addtogroup photo | |
//! @{ | |
//! the inpainting algorithm | |
enum | |
{ | |
INPAINT_NS = 0, // Navier-Stokes algorithm | |
INPAINT_TELEA = 1 // A. Telea algorithm | |
}; | |
enum | |
{ | |
NORMAL_CLONE = 1, | |
MIXED_CLONE = 2, | |
MONOCHROME_TRANSFER = 3 | |
}; | |
enum | |
{ | |
RECURS_FILTER = 1, | |
NORMCONV_FILTER = 2 | |
}; | |
/** @brief Restores the selected region in an image using the region neighborhood. | |
@param src Input 8-bit, 16-bit unsigned or 32-bit float 1-channel or 8-bit 3-channel image. | |
@param inpaintMask Inpainting mask, 8-bit 1-channel image. Non-zero pixels indicate the area that | |
needs to be inpainted. | |
@param dst Output image with the same size and type as src . | |
@param inpaintRadius Radius of a circular neighborhood of each point inpainted that is considered | |
by the algorithm. | |
@param flags Inpainting method that could be one of the following: | |
- **INPAINT_NS** Navier-Stokes based method [Navier01] | |
- **INPAINT_TELEA** Method by Alexandru Telea @cite Telea04 . | |
The function reconstructs the selected image area from the pixel near the area boundary. The | |
function may be used to remove dust and scratches from a scanned photo, or to remove undesirable | |
objects from still images or video. See <http://en.wikipedia.org/wiki/Inpainting> for more details. | |
@note | |
- An example using the inpainting technique can be found at | |
opencv_source_code/samples/cpp/inpaint.cpp | |
- (Python) An example using the inpainting technique can be found at | |
opencv_source_code/samples/python/inpaint.py | |
*/ | |
CV_EXPORTS_W void inpaint( InputArray src, InputArray inpaintMask, | |
OutputArray dst, double inpaintRadius, int flags ); | |
//! @addtogroup photo_denoise | |
//! @{ | |
/** @brief Perform image denoising using Non-local Means Denoising algorithm | |
<http://www.ipol.im/pub/algo/bcm_non_local_means_denoising/> with several computational | |
optimizations. Noise expected to be a gaussian white noise | |
@param src Input 8-bit 1-channel, 2-channel, 3-channel or 4-channel image. | |
@param dst Output image with the same size and type as src . | |
@param templateWindowSize Size in pixels of the template patch that is used to compute weights. | |
Should be odd. Recommended value 7 pixels | |
@param searchWindowSize Size in pixels of the window that is used to compute weighted average for | |
given pixel. Should be odd. Affect performance linearly: greater searchWindowsSize - greater | |
denoising time. Recommended value 21 pixels | |
@param h Parameter regulating filter strength. Big h value perfectly removes noise but also | |
removes image details, smaller h value preserves details but also preserves some noise | |
This function expected to be applied to grayscale images. For colored images look at | |
fastNlMeansDenoisingColored. Advanced usage of this functions can be manual denoising of colored | |
image in different colorspaces. Such approach is used in fastNlMeansDenoisingColored by converting | |
image to CIELAB colorspace and then separately denoise L and AB components with different h | |
parameter. | |
*/ | |
CV_EXPORTS_W void fastNlMeansDenoising( InputArray src, OutputArray dst, float h = 3, | |
int templateWindowSize = 7, int searchWindowSize = 21); | |
/** @brief Perform image denoising using Non-local Means Denoising algorithm | |
<http://www.ipol.im/pub/algo/bcm_non_local_means_denoising/> with several computational | |
optimizations. Noise expected to be a gaussian white noise | |
@param src Input 8-bit or 16-bit (only with NORM_L1) 1-channel, | |
2-channel, 3-channel or 4-channel image. | |
@param dst Output image with the same size and type as src . | |
@param templateWindowSize Size in pixels of the template patch that is used to compute weights. | |
Should be odd. Recommended value 7 pixels | |
@param searchWindowSize Size in pixels of the window that is used to compute weighted average for | |
given pixel. Should be odd. Affect performance linearly: greater searchWindowsSize - greater | |
denoising time. Recommended value 21 pixels | |
@param h Array of parameters regulating filter strength, either one | |
parameter applied to all channels or one per channel in dst. Big h value | |
perfectly removes noise but also removes image details, smaller h | |
value preserves details but also preserves some noise | |
@param normType Type of norm used for weight calculation. Can be either NORM_L2 or NORM_L1 | |
This function expected to be applied to grayscale images. For colored images look at | |
fastNlMeansDenoisingColored. Advanced usage of this functions can be manual denoising of colored | |
image in different colorspaces. Such approach is used in fastNlMeansDenoisingColored by converting | |
image to CIELAB colorspace and then separately denoise L and AB components with different h | |
parameter. | |
*/ | |
CV_EXPORTS_W void fastNlMeansDenoising( InputArray src, OutputArray dst, | |
const std::vector<float>& h, | |
int templateWindowSize = 7, int searchWindowSize = 21, | |
int normType = NORM_L2); | |
/** @brief Modification of fastNlMeansDenoising function for colored images | |
@param src Input 8-bit 3-channel image. | |
@param dst Output image with the same size and type as src . | |
@param templateWindowSize Size in pixels of the template patch that is used to compute weights. | |
Should be odd. Recommended value 7 pixels | |
@param searchWindowSize Size in pixels of the window that is used to compute weighted average for | |
given pixel. Should be odd. Affect performance linearly: greater searchWindowsSize - greater | |
denoising time. Recommended value 21 pixels | |
@param h Parameter regulating filter strength for luminance component. Bigger h value perfectly | |
removes noise but also removes image details, smaller h value preserves details but also preserves | |
some noise | |
@param hColor The same as h but for color components. For most images value equals 10 | |
will be enough to remove colored noise and do not distort colors | |
The function converts image to CIELAB colorspace and then separately denoise L and AB components | |
with given h parameters using fastNlMeansDenoising function. | |
*/ | |
CV_EXPORTS_W void fastNlMeansDenoisingColored( InputArray src, OutputArray dst, | |
float h = 3, float hColor = 3, | |
int templateWindowSize = 7, int searchWindowSize = 21); | |
/** @brief Modification of fastNlMeansDenoising function for images sequence where consecutive images have been | |
captured in small period of time. For example video. This version of the function is for grayscale | |
images or for manual manipulation with colorspaces. For more details see | |
<http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.131.6394> | |
@param srcImgs Input 8-bit 1-channel, 2-channel, 3-channel or | |
4-channel images sequence. All images should have the same type and | |
size. | |
@param imgToDenoiseIndex Target image to denoise index in srcImgs sequence | |
@param temporalWindowSize Number of surrounding images to use for target image denoising. Should | |
be odd. Images from imgToDenoiseIndex - temporalWindowSize / 2 to | |
imgToDenoiseIndex - temporalWindowSize / 2 from srcImgs will be used to denoise | |
srcImgs[imgToDenoiseIndex] image. | |
@param dst Output image with the same size and type as srcImgs images. | |
@param templateWindowSize Size in pixels of the template patch that is used to compute weights. | |
Should be odd. Recommended value 7 pixels | |
@param searchWindowSize Size in pixels of the window that is used to compute weighted average for | |
given pixel. Should be odd. Affect performance linearly: greater searchWindowsSize - greater | |
denoising time. Recommended value 21 pixels | |
@param h Parameter regulating filter strength. Bigger h value | |
perfectly removes noise but also removes image details, smaller h | |
value preserves details but also preserves some noise | |
*/ | |
CV_EXPORTS_W void fastNlMeansDenoisingMulti( InputArrayOfArrays srcImgs, OutputArray dst, | |
int imgToDenoiseIndex, int temporalWindowSize, | |
float h = 3, int templateWindowSize = 7, int searchWindowSize = 21); | |
/** @brief Modification of fastNlMeansDenoising function for images sequence where consecutive images have been | |
captured in small period of time. For example video. This version of the function is for grayscale | |
images or for manual manipulation with colorspaces. For more details see | |
<http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.131.6394> | |
@param srcImgs Input 8-bit or 16-bit (only with NORM_L1) 1-channel, | |
2-channel, 3-channel or 4-channel images sequence. All images should | |
have the same type and size. | |
@param imgToDenoiseIndex Target image to denoise index in srcImgs sequence | |
@param temporalWindowSize Number of surrounding images to use for target image denoising. Should | |
be odd. Images from imgToDenoiseIndex - temporalWindowSize / 2 to | |
imgToDenoiseIndex - temporalWindowSize / 2 from srcImgs will be used to denoise | |
srcImgs[imgToDenoiseIndex] image. | |
@param dst Output image with the same size and type as srcImgs images. | |
@param templateWindowSize Size in pixels of the template patch that is used to compute weights. | |
Should be odd. Recommended value 7 pixels | |
@param searchWindowSize Size in pixels of the window that is used to compute weighted average for | |
given pixel. Should be odd. Affect performance linearly: greater searchWindowsSize - greater | |
denoising time. Recommended value 21 pixels | |
@param h Array of parameters regulating filter strength, either one | |
parameter applied to all channels or one per channel in dst. Big h value | |
perfectly removes noise but also removes image details, smaller h | |
value preserves details but also preserves some noise | |
@param normType Type of norm used for weight calculation. Can be either NORM_L2 or NORM_L1 | |
*/ | |
CV_EXPORTS_W void fastNlMeansDenoisingMulti( InputArrayOfArrays srcImgs, OutputArray dst, | |
int imgToDenoiseIndex, int temporalWindowSize, | |
const std::vector<float>& h, | |
int templateWindowSize = 7, int searchWindowSize = 21, | |
int normType = NORM_L2); | |
/** @brief Modification of fastNlMeansDenoisingMulti function for colored images sequences | |
@param srcImgs Input 8-bit 3-channel images sequence. All images should have the same type and | |
size. | |
@param imgToDenoiseIndex Target image to denoise index in srcImgs sequence | |
@param temporalWindowSize Number of surrounding images to use for target image denoising. Should | |
be odd. Images from imgToDenoiseIndex - temporalWindowSize / 2 to | |
imgToDenoiseIndex - temporalWindowSize / 2 from srcImgs will be used to denoise | |
srcImgs[imgToDenoiseIndex] image. | |
@param dst Output image with the same size and type as srcImgs images. | |
@param templateWindowSize Size in pixels of the template patch that is used to compute weights. | |
Should be odd. Recommended value 7 pixels | |
@param searchWindowSize Size in pixels of the window that is used to compute weighted average for | |
given pixel. Should be odd. Affect performance linearly: greater searchWindowsSize - greater | |
denoising time. Recommended value 21 pixels | |
@param h Parameter regulating filter strength for luminance component. Bigger h value perfectly | |
removes noise but also removes image details, smaller h value preserves details but also preserves | |
some noise. | |
@param hColor The same as h but for color components. | |
The function converts images to CIELAB colorspace and then separately denoise L and AB components | |
with given h parameters using fastNlMeansDenoisingMulti function. | |
*/ | |
CV_EXPORTS_W void fastNlMeansDenoisingColoredMulti( InputArrayOfArrays srcImgs, OutputArray dst, | |
int imgToDenoiseIndex, int temporalWindowSize, | |
float h = 3, float hColor = 3, | |
int templateWindowSize = 7, int searchWindowSize = 21); | |
/** @brief Primal-dual algorithm is an algorithm for solving special types of variational problems (that is, | |
finding a function to minimize some functional). As the image denoising, in particular, may be seen | |
as the variational problem, primal-dual algorithm then can be used to perform denoising and this is | |
exactly what is implemented. | |
It should be noted, that this implementation was taken from the July 2013 blog entry | |
@cite MA13 , which also contained (slightly more general) ready-to-use source code on Python. | |
Subsequently, that code was rewritten on C++ with the usage of openCV by Vadim Pisarevsky at the end | |
of July 2013 and finally it was slightly adapted by later authors. | |
Although the thorough discussion and justification of the algorithm involved may be found in | |
@cite ChambolleEtAl, it might make sense to skim over it here, following @cite MA13 . To begin | |
with, we consider the 1-byte gray-level images as the functions from the rectangular domain of | |
pixels (it may be seen as set | |
\f$\left\{(x,y)\in\mathbb{N}\times\mathbb{N}\mid 1\leq x\leq n,\;1\leq y\leq m\right\}\f$ for some | |
\f$m,\;n\in\mathbb{N}\f$) into \f$\{0,1,\dots,255\}\f$. We shall denote the noised images as \f$f_i\f$ and with | |
this view, given some image \f$x\f$ of the same size, we may measure how bad it is by the formula | |
\f[\left\|\left\|\nabla x\right\|\right\| + \lambda\sum_i\left\|\left\|x-f_i\right\|\right\|\f] | |
\f$\|\|\cdot\|\|\f$ here denotes \f$L_2\f$-norm and as you see, the first addend states that we want our | |
image to be smooth (ideally, having zero gradient, thus being constant) and the second states that | |
we want our result to be close to the observations we've got. If we treat \f$x\f$ as a function, this is | |
exactly the functional what we seek to minimize and here the Primal-Dual algorithm comes into play. | |
@param observations This array should contain one or more noised versions of the image that is to | |
be restored. | |
@param result Here the denoised image will be stored. There is no need to do pre-allocation of | |
storage space, as it will be automatically allocated, if necessary. | |
@param lambda Corresponds to \f$\lambda\f$ in the formulas above. As it is enlarged, the smooth | |
(blurred) images are treated more favorably than detailed (but maybe more noised) ones. Roughly | |
speaking, as it becomes smaller, the result will be more blur but more sever outliers will be | |
removed. | |
@param niters Number of iterations that the algorithm will run. Of course, as more iterations as | |
better, but it is hard to quantitatively refine this statement, so just use the default and | |
increase it if the results are poor. | |
*/ | |
CV_EXPORTS_W void denoise_TVL1(const std::vector<Mat>& observations,Mat& result, double lambda=1.0, int niters=30); | |
//! @} photo_denoise | |
//! @addtogroup photo_hdr | |
//! @{ | |
enum { LDR_SIZE = 256 }; | |
/** @brief Base class for tonemapping algorithms - tools that are used to map HDR image to 8-bit range. | |
*/ | |
class CV_EXPORTS_W Tonemap : public Algorithm | |
{ | |
public: | |
/** @brief Tonemaps image | |
@param src source image - 32-bit 3-channel Mat | |
@param dst destination image - 32-bit 3-channel Mat with values in [0, 1] range | |
*/ | |
CV_WRAP virtual void process(InputArray src, OutputArray dst) = 0; | |
CV_WRAP virtual float getGamma() const = 0; | |
CV_WRAP virtual void setGamma(float gamma) = 0; | |
}; | |
/** @brief Creates simple linear mapper with gamma correction | |
@param gamma positive value for gamma correction. Gamma value of 1.0 implies no correction, gamma | |
equal to 2.2f is suitable for most displays. | |
Generally gamma \> 1 brightens the image and gamma \< 1 darkens it. | |
*/ | |
CV_EXPORTS_W Ptr<Tonemap> createTonemap(float gamma = 1.0f); | |
/** @brief Adaptive logarithmic mapping is a fast global tonemapping algorithm that scales the image in | |
logarithmic domain. | |
Since it's a global operator the same function is applied to all the pixels, it is controlled by the | |
bias parameter. | |
Optional saturation enhancement is possible as described in @cite FL02 . | |
For more information see @cite DM03 . | |
*/ | |
class CV_EXPORTS_W TonemapDrago : public Tonemap | |
{ | |
public: | |
CV_WRAP virtual float getSaturation() const = 0; | |
CV_WRAP virtual void setSaturation(float saturation) = 0; | |
CV_WRAP virtual float getBias() const = 0; | |
CV_WRAP virtual void setBias(float bias) = 0; | |
}; | |
/** @brief Creates TonemapDrago object | |
@param gamma gamma value for gamma correction. See createTonemap | |
@param saturation positive saturation enhancement value. 1.0 preserves saturation, values greater | |
than 1 increase saturation and values less than 1 decrease it. | |
@param bias value for bias function in [0, 1] range. Values from 0.7 to 0.9 usually give best | |
results, default value is 0.85. | |
*/ | |
CV_EXPORTS_W Ptr<TonemapDrago> createTonemapDrago(float gamma = 1.0f, float saturation = 1.0f, float bias = 0.85f); | |
/** @brief This algorithm decomposes image into two layers: base layer and detail layer using bilateral filter | |
and compresses contrast of the base layer thus preserving all the details. | |
This implementation uses regular bilateral filter from opencv. | |
Saturation enhancement is possible as in ocvTonemapDrago. | |
For more information see @cite DD02 . | |
*/ | |
class CV_EXPORTS_W TonemapDurand : public Tonemap | |
{ | |
public: | |
CV_WRAP virtual float getSaturation() const = 0; | |
CV_WRAP virtual void setSaturation(float saturation) = 0; | |
CV_WRAP virtual float getContrast() const = 0; | |
CV_WRAP virtual void setContrast(float contrast) = 0; | |
CV_WRAP virtual float getSigmaSpace() const = 0; | |
CV_WRAP virtual void setSigmaSpace(float sigma_space) = 0; | |
CV_WRAP virtual float getSigmaColor() const = 0; | |
CV_WRAP virtual void setSigmaColor(float sigma_color) = 0; | |
}; | |
/** @brief Creates TonemapDurand object | |
@param gamma gamma value for gamma correction. See createTonemap | |
@param contrast resulting contrast on logarithmic scale, i. e. log(max / min), where max and min | |
are maximum and minimum luminance values of the resulting image. | |
@param saturation saturation enhancement value. See createTonemapDrago | |
@param sigma_space bilateral filter sigma in color space | |
@param sigma_color bilateral filter sigma in coordinate space | |
*/ | |
CV_EXPORTS_W Ptr<TonemapDurand> | |
createTonemapDurand(float gamma = 1.0f, float contrast = 4.0f, float saturation = 1.0f, float sigma_space = 2.0f, float sigma_color = 2.0f); | |
/** @brief This is a global tonemapping operator that models human visual system. | |
Mapping function is controlled by adaptation parameter, that is computed using light adaptation and | |
color adaptation. | |
For more information see @cite RD05 . | |
*/ | |
class CV_EXPORTS_W TonemapReinhard : public Tonemap | |
{ | |
public: | |
CV_WRAP virtual float getIntensity() const = 0; | |
CV_WRAP virtual void setIntensity(float intensity) = 0; | |
CV_WRAP virtual float getLightAdaptation() const = 0; | |
CV_WRAP virtual void setLightAdaptation(float light_adapt) = 0; | |
CV_WRAP virtual float getColorAdaptation() const = 0; | |
CV_WRAP virtual void setColorAdaptation(float color_adapt) = 0; | |
}; | |
/** @brief Creates TonemapReinhard object | |
@param gamma gamma value for gamma correction. See createTonemap | |
@param intensity result intensity in [-8, 8] range. Greater intensity produces brighter results. | |
@param light_adapt light adaptation in [0, 1] range. If 1 adaptation is based only on pixel | |
value, if 0 it's global, otherwise it's a weighted mean of this two cases. | |
@param color_adapt chromatic adaptation in [0, 1] range. If 1 channels are treated independently, | |
if 0 adaptation level is the same for each channel. | |
*/ | |
CV_EXPORTS_W Ptr<TonemapReinhard> | |
createTonemapReinhard(float gamma = 1.0f, float intensity = 0.0f, float light_adapt = 1.0f, float color_adapt = 0.0f); | |
/** @brief This algorithm transforms image to contrast using gradients on all levels of gaussian pyramid, | |
transforms contrast values to HVS response and scales the response. After this the image is | |
reconstructed from new contrast values. | |
For more information see @cite MM06 . | |
*/ | |
class CV_EXPORTS_W TonemapMantiuk : public Tonemap | |
{ | |
public: | |
CV_WRAP virtual float getScale() const = 0; | |
CV_WRAP virtual void setScale(float scale) = 0; | |
CV_WRAP virtual float getSaturation() const = 0; | |
CV_WRAP virtual void setSaturation(float saturation) = 0; | |
}; | |
/** @brief Creates TonemapMantiuk object | |
@param gamma gamma value for gamma correction. See createTonemap | |
@param scale contrast scale factor. HVS response is multiplied by this parameter, thus compressing | |
dynamic range. Values from 0.6 to 0.9 produce best results. | |
@param saturation saturation enhancement value. See createTonemapDrago | |
*/ | |
CV_EXPORTS_W Ptr<TonemapMantiuk> | |
createTonemapMantiuk(float gamma = 1.0f, float scale = 0.7f, float saturation = 1.0f); | |
/** @brief The base class for algorithms that align images of the same scene with different exposures | |
*/ | |
class CV_EXPORTS_W AlignExposures : public Algorithm | |
{ | |
public: | |
/** @brief Aligns images | |
@param src vector of input images | |
@param dst vector of aligned images | |
@param times vector of exposure time values for each image | |
@param response 256x1 matrix with inverse camera response function for each pixel value, it should | |
have the same number of channels as images. | |
*/ | |
CV_WRAP virtual void process(InputArrayOfArrays src, std::vector<Mat>& dst, | |
InputArray times, InputArray response) = 0; | |
}; | |
/** @brief This algorithm converts images to median threshold bitmaps (1 for pixels brighter than median | |
luminance and 0 otherwise) and than aligns the resulting bitmaps using bit operations. | |
It is invariant to exposure, so exposure values and camera response are not necessary. | |
In this implementation new image regions are filled with zeros. | |
For more information see @cite GW03 . | |
*/ | |
class CV_EXPORTS_W AlignMTB : public AlignExposures | |
{ | |
public: | |
CV_WRAP virtual void process(InputArrayOfArrays src, std::vector<Mat>& dst, | |
InputArray times, InputArray response) CV_OVERRIDE = 0; | |
/** @brief Short version of process, that doesn't take extra arguments. | |
@param src vector of input images | |
@param dst vector of aligned images | |
*/ | |
CV_WRAP virtual void process(InputArrayOfArrays src, std::vector<Mat>& dst) = 0; | |
/** @brief Calculates shift between two images, i. e. how to shift the second image to correspond it with the | |
first. | |
@param img0 first image | |
@param img1 second image | |
*/ | |
CV_WRAP virtual Point calculateShift(InputArray img0, InputArray img1) = 0; | |
/** @brief Helper function, that shift Mat filling new regions with zeros. | |
@param src input image | |
@param dst result image | |
@param shift shift value | |
*/ | |
CV_WRAP virtual void shiftMat(InputArray src, OutputArray dst, const Point shift) = 0; | |
/** @brief Computes median threshold and exclude bitmaps of given image. | |
@param img input image | |
@param tb median threshold bitmap | |
@param eb exclude bitmap | |
*/ | |
CV_WRAP virtual void computeBitmaps(InputArray img, OutputArray tb, OutputArray eb) = 0; | |
CV_WRAP virtual int getMaxBits() const = 0; | |
CV_WRAP virtual void setMaxBits(int max_bits) = 0; | |
CV_WRAP virtual int getExcludeRange() const = 0; | |
CV_WRAP virtual void setExcludeRange(int exclude_range) = 0; | |
CV_WRAP virtual bool getCut() const = 0; | |
CV_WRAP virtual void setCut(bool value) = 0; | |
}; | |
/** @brief Creates AlignMTB object | |
@param max_bits logarithm to the base 2 of maximal shift in each dimension. Values of 5 and 6 are | |
usually good enough (31 and 63 pixels shift respectively). | |
@param exclude_range range for exclusion bitmap that is constructed to suppress noise around the | |
median value. | |
@param cut if true cuts images, otherwise fills the new regions with zeros. | |
*/ | |
CV_EXPORTS_W Ptr<AlignMTB> createAlignMTB(int max_bits = 6, int exclude_range = 4, bool cut = true); | |
/** @brief The base class for camera response calibration algorithms. | |
*/ | |
class CV_EXPORTS_W CalibrateCRF : public Algorithm | |
{ | |
public: | |
/** @brief Recovers inverse camera response. | |
@param src vector of input images | |
@param dst 256x1 matrix with inverse camera response function | |
@param times vector of exposure time values for each image | |
*/ | |
CV_WRAP virtual void process(InputArrayOfArrays src, OutputArray dst, InputArray times) = 0; | |
}; | |
/** @brief Inverse camera response function is extracted for each brightness value by minimizing an objective | |
function as linear system. Objective function is constructed using pixel values on the same position | |
in all images, extra term is added to make the result smoother. | |
For more information see @cite DM97 . | |
*/ | |
class CV_EXPORTS_W CalibrateDebevec : public CalibrateCRF | |
{ | |
public: | |
CV_WRAP virtual float getLambda() const = 0; | |
CV_WRAP virtual void setLambda(float lambda) = 0; | |
CV_WRAP virtual int getSamples() const = 0; | |
CV_WRAP virtual void setSamples(int samples) = 0; | |
CV_WRAP virtual bool getRandom() const = 0; | |
CV_WRAP virtual void setRandom(bool random) = 0; | |
}; | |
/** @brief Creates CalibrateDebevec object | |
@param samples number of pixel locations to use | |
@param lambda smoothness term weight. Greater values produce smoother results, but can alter the | |
response. | |
@param random if true sample pixel locations are chosen at random, otherwise they form a | |
rectangular grid. | |
*/ | |
CV_EXPORTS_W Ptr<CalibrateDebevec> createCalibrateDebevec(int samples = 70, float lambda = 10.0f, bool random = false); | |
/** @brief Inverse camera response function is extracted for each brightness value by minimizing an objective | |
function as linear system. This algorithm uses all image pixels. | |
For more information see @cite RB99 . | |
*/ | |
class CV_EXPORTS_W CalibrateRobertson : public CalibrateCRF | |
{ | |
public: | |
CV_WRAP virtual int getMaxIter() const = 0; | |
CV_WRAP virtual void setMaxIter(int max_iter) = 0; | |
CV_WRAP virtual float getThreshold() const = 0; | |
CV_WRAP virtual void setThreshold(float threshold) = 0; | |
CV_WRAP virtual Mat getRadiance() const = 0; | |
}; | |
/** @brief Creates CalibrateRobertson object | |
@param max_iter maximal number of Gauss-Seidel solver iterations. | |
@param threshold target difference between results of two successive steps of the minimization. | |
*/ | |
CV_EXPORTS_W Ptr<CalibrateRobertson> createCalibrateRobertson(int max_iter = 30, float threshold = 0.01f); | |
/** @brief The base class algorithms that can merge exposure sequence to a single image. | |
*/ | |
class CV_EXPORTS_W MergeExposures : public Algorithm | |
{ | |
public: | |
/** @brief Merges images. | |
@param src vector of input images | |
@param dst result image | |
@param times vector of exposure time values for each image | |
@param response 256x1 matrix with inverse camera response function for each pixel value, it should | |
have the same number of channels as images. | |
*/ | |
CV_WRAP virtual void process(InputArrayOfArrays src, OutputArray dst, | |
InputArray times, InputArray response) = 0; | |
}; | |
/** @brief The resulting HDR image is calculated as weighted average of the exposures considering exposure | |
values and camera response. | |
For more information see @cite DM97 . | |
*/ | |
class CV_EXPORTS_W MergeDebevec : public MergeExposures | |
{ | |
public: | |
CV_WRAP virtual void process(InputArrayOfArrays src, OutputArray dst, | |
InputArray times, InputArray response) CV_OVERRIDE = 0; | |
CV_WRAP virtual void process(InputArrayOfArrays src, OutputArray dst, InputArray times) = 0; | |
}; | |
/** @brief Creates MergeDebevec object | |
*/ | |
CV_EXPORTS_W Ptr<MergeDebevec> createMergeDebevec(); | |
/** @brief Pixels are weighted using contrast, saturation and well-exposedness measures, than images are | |
combined using laplacian pyramids. | |
The resulting image weight is constructed as weighted average of contrast, saturation and | |
well-exposedness measures. | |
The resulting image doesn't require tonemapping and can be converted to 8-bit image by multiplying | |
by 255, but it's recommended to apply gamma correction and/or linear tonemapping. | |
For more information see @cite MK07 . | |
*/ | |
class CV_EXPORTS_W MergeMertens : public MergeExposures | |
{ | |
public: | |
CV_WRAP virtual void process(InputArrayOfArrays src, OutputArray dst, | |
InputArray times, InputArray response) CV_OVERRIDE = 0; | |
/** @brief Short version of process, that doesn't take extra arguments. | |
@param src vector of input images | |
@param dst result image | |
*/ | |
CV_WRAP virtual void process(InputArrayOfArrays src, OutputArray dst) = 0; | |
CV_WRAP virtual float getContrastWeight() const = 0; | |
CV_WRAP virtual void setContrastWeight(float contrast_weiht) = 0; | |
CV_WRAP virtual float getSaturationWeight() const = 0; | |
CV_WRAP virtual void setSaturationWeight(float saturation_weight) = 0; | |
CV_WRAP virtual float getExposureWeight() const = 0; | |
CV_WRAP virtual void setExposureWeight(float exposure_weight) = 0; | |
}; | |
/** @brief Creates MergeMertens object | |
@param contrast_weight contrast measure weight. See MergeMertens. | |
@param saturation_weight saturation measure weight | |
@param exposure_weight well-exposedness measure weight | |
*/ | |
CV_EXPORTS_W Ptr<MergeMertens> | |
createMergeMertens(float contrast_weight = 1.0f, float saturation_weight = 1.0f, float exposure_weight = 0.0f); | |
/** @brief The resulting HDR image is calculated as weighted average of the exposures considering exposure | |
values and camera response. | |
For more information see @cite RB99 . | |
*/ | |
class CV_EXPORTS_W MergeRobertson : public MergeExposures | |
{ | |
public: | |
CV_WRAP virtual void process(InputArrayOfArrays src, OutputArray dst, | |
InputArray times, InputArray response) CV_OVERRIDE = 0; | |
CV_WRAP virtual void process(InputArrayOfArrays src, OutputArray dst, InputArray times) = 0; | |
}; | |
/** @brief Creates MergeRobertson object | |
*/ | |
CV_EXPORTS_W Ptr<MergeRobertson> createMergeRobertson(); | |
//! @} photo_hdr | |
/** @brief Transforms a color image to a grayscale image. It is a basic tool in digital printing, stylized | |
black-and-white photograph rendering, and in many single channel image processing applications | |
@cite CL12 . | |
@param src Input 8-bit 3-channel image. | |
@param grayscale Output 8-bit 1-channel image. | |
@param color_boost Output 8-bit 3-channel image. | |
This function is to be applied on color images. | |
*/ | |
CV_EXPORTS_W void decolor( InputArray src, OutputArray grayscale, OutputArray color_boost); | |
//! @addtogroup photo_clone | |
//! @{ | |
/** @example cloning_demo.cpp | |
An example using seamlessClone function | |
*/ | |
/** @brief Image editing tasks concern either global changes (color/intensity corrections, filters, | |
deformations) or local changes concerned to a selection. Here we are interested in achieving local | |
changes, ones that are restricted to a region manually selected (ROI), in a seamless and effortless | |
manner. The extent of the changes ranges from slight distortions to complete replacement by novel | |
content @cite PM03 . | |
@param src Input 8-bit 3-channel image. | |
@param dst Input 8-bit 3-channel image. | |
@param mask Input 8-bit 1 or 3-channel image. | |
@param p Point in dst image where object is placed. | |
@param blend Output image with the same size and type as dst. | |
@param flags Cloning method that could be one of the following: | |
- **NORMAL_CLONE** The power of the method is fully expressed when inserting objects with | |
complex outlines into a new background | |
- **MIXED_CLONE** The classic method, color-based selection and alpha masking might be time | |
consuming and often leaves an undesirable halo. Seamless cloning, even averaged with the | |
original image, is not effective. Mixed seamless cloning based on a loose selection proves | |
effective. | |
- **MONOCHROME_TRANSFER** Monochrome transfer allows the user to easily replace certain features of | |
one object by alternative features. | |
*/ | |
CV_EXPORTS_W void seamlessClone( InputArray src, InputArray dst, InputArray mask, Point p, | |
OutputArray blend, int flags); | |
/** @brief Given an original color image, two differently colored versions of this image can be mixed | |
seamlessly. | |
@param src Input 8-bit 3-channel image. | |
@param mask Input 8-bit 1 or 3-channel image. | |
@param dst Output image with the same size and type as src . | |
@param red_mul R-channel multiply factor. | |
@param green_mul G-channel multiply factor. | |
@param blue_mul B-channel multiply factor. | |
Multiplication factor is between .5 to 2.5. | |
*/ | |
CV_EXPORTS_W void colorChange(InputArray src, InputArray mask, OutputArray dst, float red_mul = 1.0f, | |
float green_mul = 1.0f, float blue_mul = 1.0f); | |
/** @brief Applying an appropriate non-linear transformation to the gradient field inside the selection and | |
then integrating back with a Poisson solver, modifies locally the apparent illumination of an image. | |
@param src Input 8-bit 3-channel image. | |
@param mask Input 8-bit 1 or 3-channel image. | |
@param dst Output image with the same size and type as src. | |
@param alpha Value ranges between 0-2. | |
@param beta Value ranges between 0-2. | |
This is useful to highlight under-exposed foreground objects or to reduce specular reflections. | |
*/ | |
CV_EXPORTS_W void illuminationChange(InputArray src, InputArray mask, OutputArray dst, | |
float alpha = 0.2f, float beta = 0.4f); | |
/** @brief By retaining only the gradients at edge locations, before integrating with the Poisson solver, one | |
washes out the texture of the selected region, giving its contents a flat aspect. Here Canny Edge | |
Detector is used. | |
@param src Input 8-bit 3-channel image. | |
@param mask Input 8-bit 1 or 3-channel image. | |
@param dst Output image with the same size and type as src. | |
@param low_threshold Range from 0 to 100. | |
@param high_threshold Value \> 100. | |
@param kernel_size The size of the Sobel kernel to be used. | |
**NOTE:** | |
The algorithm assumes that the color of the source image is close to that of the destination. This | |
assumption means that when the colors don't match, the source image color gets tinted toward the | |
color of the destination image. | |
*/ | |
CV_EXPORTS_W void textureFlattening(InputArray src, InputArray mask, OutputArray dst, | |
float low_threshold = 30, float high_threshold = 45, | |
int kernel_size = 3); | |
//! @} photo_clone | |
//! @addtogroup photo_render | |
//! @{ | |
/** @brief Filtering is the fundamental operation in image and video processing. Edge-preserving smoothing | |
filters are used in many different applications @cite EM11 . | |
@param src Input 8-bit 3-channel image. | |
@param dst Output 8-bit 3-channel image. | |
@param flags Edge preserving filters: | |
- **RECURS_FILTER** = 1 | |
- **NORMCONV_FILTER** = 2 | |
@param sigma_s Range between 0 to 200. | |
@param sigma_r Range between 0 to 1. | |
*/ | |
CV_EXPORTS_W void edgePreservingFilter(InputArray src, OutputArray dst, int flags = 1, | |
float sigma_s = 60, float sigma_r = 0.4f); | |
/** @brief This filter enhances the details of a particular image. | |
@param src Input 8-bit 3-channel image. | |
@param dst Output image with the same size and type as src. | |
@param sigma_s Range between 0 to 200. | |
@param sigma_r Range between 0 to 1. | |
*/ | |
CV_EXPORTS_W void detailEnhance(InputArray src, OutputArray dst, float sigma_s = 10, | |
float sigma_r = 0.15f); | |
/** @example npr_demo.cpp | |
An example using non-photorealistic line drawing functions | |
*/ | |
/** @brief Pencil-like non-photorealistic line drawing | |
@param src Input 8-bit 3-channel image. | |
@param dst1 Output 8-bit 1-channel image. | |
@param dst2 Output image with the same size and type as src. | |
@param sigma_s Range between 0 to 200. | |
@param sigma_r Range between 0 to 1. | |
@param shade_factor Range between 0 to 0.1. | |
*/ | |
CV_EXPORTS_W void pencilSketch(InputArray src, OutputArray dst1, OutputArray dst2, | |
float sigma_s = 60, float sigma_r = 0.07f, float shade_factor = 0.02f); | |
/** @brief Stylization aims to produce digital imagery with a wide variety of effects not focused on | |
photorealism. Edge-aware filters are ideal for stylization, as they can abstract regions of low | |
contrast while preserving, or enhancing, high-contrast features. | |
@param src Input 8-bit 3-channel image. | |
@param dst Output image with the same size and type as src. | |
@param sigma_s Range between 0 to 200. | |
@param sigma_r Range between 0 to 1. | |
*/ | |
CV_EXPORTS_W void stylization(InputArray src, OutputArray dst, float sigma_s = 60, | |
float sigma_r = 0.45f); | |
//! @} photo_render | |
//! @} photo | |
} // cv | |