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import logging |
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import numpy as np |
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import os |
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import tempfile |
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import xml.etree.ElementTree as ET |
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from collections import OrderedDict, defaultdict |
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from functools import lru_cache |
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import torch |
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from detectron2.data import MetadataCatalog |
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from detectron2.utils import comm |
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from detectron2.utils.file_io import PathManager |
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from .evaluator import DatasetEvaluator |
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class PascalVOCDetectionEvaluator(DatasetEvaluator): |
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""" |
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Evaluate Pascal VOC style AP for Pascal VOC dataset. |
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It contains a synchronization, therefore has to be called from all ranks. |
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Note that the concept of AP can be implemented in different ways and may not |
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produce identical results. This class mimics the implementation of the official |
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Pascal VOC Matlab API, and should produce similar but not identical results to the |
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official API. |
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""" |
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def __init__(self, dataset_name): |
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""" |
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Args: |
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dataset_name (str): name of the dataset, e.g., "voc_2007_test" |
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""" |
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self._dataset_name = dataset_name |
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meta = MetadataCatalog.get(dataset_name) |
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annotation_dir_local = PathManager.get_local_path( |
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os.path.join(meta.dirname, "Annotations/") |
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) |
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self._anno_file_template = os.path.join(annotation_dir_local, "{}.xml") |
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self._image_set_path = os.path.join(meta.dirname, "ImageSets", "Main", meta.split + ".txt") |
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self._class_names = meta.thing_classes |
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assert meta.year in [2007, 2012], meta.year |
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self._is_2007 = meta.year == 2007 |
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self._cpu_device = torch.device("cpu") |
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self._logger = logging.getLogger(__name__) |
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def reset(self): |
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self._predictions = defaultdict(list) |
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def process(self, inputs, outputs): |
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for input, output in zip(inputs, outputs): |
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image_id = input["image_id"] |
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instances = output["instances"].to(self._cpu_device) |
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boxes = instances.pred_boxes.tensor.numpy() |
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scores = instances.scores.tolist() |
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classes = instances.pred_classes.tolist() |
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for box, score, cls in zip(boxes, scores, classes): |
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xmin, ymin, xmax, ymax = box |
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xmin += 1 |
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ymin += 1 |
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self._predictions[cls].append( |
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f"{image_id} {score:.3f} {xmin:.1f} {ymin:.1f} {xmax:.1f} {ymax:.1f}" |
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) |
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def evaluate(self): |
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""" |
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Returns: |
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dict: has a key "segm", whose value is a dict of "AP", "AP50", and "AP75". |
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""" |
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all_predictions = comm.gather(self._predictions, dst=0) |
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if not comm.is_main_process(): |
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return |
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predictions = defaultdict(list) |
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for predictions_per_rank in all_predictions: |
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for clsid, lines in predictions_per_rank.items(): |
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predictions[clsid].extend(lines) |
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del all_predictions |
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self._logger.info( |
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"Evaluating {} using {} metric. " |
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"Note that results do not use the official Matlab API.".format( |
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self._dataset_name, 2007 if self._is_2007 else 2012 |
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) |
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) |
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with tempfile.TemporaryDirectory(prefix="pascal_voc_eval_") as dirname: |
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res_file_template = os.path.join(dirname, "{}.txt") |
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aps = defaultdict(list) |
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for cls_id, cls_name in enumerate(self._class_names): |
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lines = predictions.get(cls_id, [""]) |
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with open(res_file_template.format(cls_name), "w") as f: |
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f.write("\n".join(lines)) |
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for thresh in range(50, 100, 5): |
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rec, prec, ap = voc_eval( |
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res_file_template, |
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self._anno_file_template, |
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self._image_set_path, |
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cls_name, |
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ovthresh=thresh / 100.0, |
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use_07_metric=self._is_2007, |
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) |
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aps[thresh].append(ap * 100) |
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ret = OrderedDict() |
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mAP = {iou: np.mean(x) for iou, x in aps.items()} |
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ret["bbox"] = {"AP": np.mean(list(mAP.values())), "AP50": mAP[50], "AP75": mAP[75]} |
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return ret |
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"""Python implementation of the PASCAL VOC devkit's AP evaluation code.""" |
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@lru_cache(maxsize=None) |
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def parse_rec(filename): |
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"""Parse a PASCAL VOC xml file.""" |
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with PathManager.open(filename) as f: |
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tree = ET.parse(f) |
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objects = [] |
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for obj in tree.findall("object"): |
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obj_struct = {} |
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obj_struct["name"] = obj.find("name").text |
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obj_struct["pose"] = obj.find("pose").text |
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obj_struct["truncated"] = int(obj.find("truncated").text) |
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obj_struct["difficult"] = int(obj.find("difficult").text) |
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bbox = obj.find("bndbox") |
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obj_struct["bbox"] = [ |
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int(bbox.find("xmin").text), |
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int(bbox.find("ymin").text), |
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int(bbox.find("xmax").text), |
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int(bbox.find("ymax").text), |
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] |
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objects.append(obj_struct) |
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return objects |
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def voc_ap(rec, prec, use_07_metric=False): |
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"""Compute VOC AP given precision and recall. If use_07_metric is true, uses |
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the VOC 07 11-point method (default:False). |
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""" |
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if use_07_metric: |
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ap = 0.0 |
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for t in np.arange(0.0, 1.1, 0.1): |
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if np.sum(rec >= t) == 0: |
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p = 0 |
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else: |
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p = np.max(prec[rec >= t]) |
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ap = ap + p / 11.0 |
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else: |
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mrec = np.concatenate(([0.0], rec, [1.0])) |
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mpre = np.concatenate(([0.0], prec, [0.0])) |
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for i in range(mpre.size - 1, 0, -1): |
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mpre[i - 1] = np.maximum(mpre[i - 1], mpre[i]) |
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i = np.where(mrec[1:] != mrec[:-1])[0] |
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ap = np.sum((mrec[i + 1] - mrec[i]) * mpre[i + 1]) |
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return ap |
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def voc_eval(detpath, annopath, imagesetfile, classname, ovthresh=0.5, use_07_metric=False): |
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"""rec, prec, ap = voc_eval(detpath, |
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annopath, |
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imagesetfile, |
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classname, |
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[ovthresh], |
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[use_07_metric]) |
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Top level function that does the PASCAL VOC evaluation. |
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detpath: Path to detections |
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detpath.format(classname) should produce the detection results file. |
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annopath: Path to annotations |
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annopath.format(imagename) should be the xml annotations file. |
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imagesetfile: Text file containing the list of images, one image per line. |
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classname: Category name (duh) |
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[ovthresh]: Overlap threshold (default = 0.5) |
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[use_07_metric]: Whether to use VOC07's 11 point AP computation |
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(default False) |
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""" |
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with PathManager.open(imagesetfile, "r") as f: |
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lines = f.readlines() |
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imagenames = [x.strip() for x in lines] |
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recs = {} |
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for imagename in imagenames: |
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recs[imagename] = parse_rec(annopath.format(imagename)) |
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class_recs = {} |
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npos = 0 |
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for imagename in imagenames: |
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R = [obj for obj in recs[imagename] if obj["name"] == classname] |
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bbox = np.array([x["bbox"] for x in R]) |
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difficult = np.array([x["difficult"] for x in R]).astype(bool) |
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det = [False] * len(R) |
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npos = npos + sum(~difficult) |
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class_recs[imagename] = {"bbox": bbox, "difficult": difficult, "det": det} |
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detfile = detpath.format(classname) |
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with open(detfile, "r") as f: |
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lines = f.readlines() |
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splitlines = [x.strip().split(" ") for x in lines] |
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image_ids = [x[0] for x in splitlines] |
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confidence = np.array([float(x[1]) for x in splitlines]) |
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BB = np.array([[float(z) for z in x[2:]] for x in splitlines]).reshape(-1, 4) |
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sorted_ind = np.argsort(-confidence) |
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BB = BB[sorted_ind, :] |
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image_ids = [image_ids[x] for x in sorted_ind] |
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nd = len(image_ids) |
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tp = np.zeros(nd) |
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fp = np.zeros(nd) |
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for d in range(nd): |
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R = class_recs[image_ids[d]] |
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bb = BB[d, :].astype(float) |
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ovmax = -np.inf |
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BBGT = R["bbox"].astype(float) |
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if BBGT.size > 0: |
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ixmin = np.maximum(BBGT[:, 0], bb[0]) |
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iymin = np.maximum(BBGT[:, 1], bb[1]) |
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ixmax = np.minimum(BBGT[:, 2], bb[2]) |
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iymax = np.minimum(BBGT[:, 3], bb[3]) |
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iw = np.maximum(ixmax - ixmin + 1.0, 0.0) |
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ih = np.maximum(iymax - iymin + 1.0, 0.0) |
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inters = iw * ih |
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uni = ( |
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(bb[2] - bb[0] + 1.0) * (bb[3] - bb[1] + 1.0) |
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+ (BBGT[:, 2] - BBGT[:, 0] + 1.0) * (BBGT[:, 3] - BBGT[:, 1] + 1.0) |
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- inters |
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) |
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overlaps = inters / uni |
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ovmax = np.max(overlaps) |
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jmax = np.argmax(overlaps) |
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if ovmax > ovthresh: |
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if not R["difficult"][jmax]: |
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if not R["det"][jmax]: |
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tp[d] = 1.0 |
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R["det"][jmax] = 1 |
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else: |
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fp[d] = 1.0 |
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else: |
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fp[d] = 1.0 |
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fp = np.cumsum(fp) |
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tp = np.cumsum(tp) |
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rec = tp / float(npos) |
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prec = tp / np.maximum(tp + fp, np.finfo(np.float64).eps) |
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ap = voc_ap(rec, prec, use_07_metric) |
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return rec, prec, ap |
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