Model Card for efficientvim_m1_il-common
A EfficientViM image classification model. This model was trained on the il-common
dataset, which contains common bird species found in Israel.
The species list is derived from data available at https://www.israbirding.com/checklist/.
Model Details
Model Type: Image classification and detection backbone
Model Stats:
- Params (M): 6.1
- Input image size: 256 x 256
Dataset: il-common (371 classes)
Papers:
- EfficientViM: Efficient Vision Mamba with Hidden State Mixer based State Space Duality: https://arxiv.org/abs/2411.15241
Model Usage
Image Classification
import birder
from birder.inference.classification import infer_image
(net, model_info) = birder.load_pretrained_model("efficientvim_m1_il-common", inference=True)
# Get the image size the model was trained on
size = birder.get_size_from_signature(model_info.signature)
# Create an inference transform
transform = birder.classification_transform(size, model_info.rgb_stats)
image = "path/to/image.jpeg" # or a PIL image, must be loaded in RGB format
(out, _) = infer_image(net, image, transform)
# out is a NumPy array with shape of (1, 371), representing class probabilities.
Image Embeddings
import birder
from birder.inference.classification import infer_image
(net, model_info) = birder.load_pretrained_model("efficientvim_m1_il-common", inference=True)
# Get the image size the model was trained on
size = birder.get_size_from_signature(model_info.signature)
# Create an inference transform
transform = birder.classification_transform(size, model_info.rgb_stats)
image = "path/to/image.jpeg" # or a PIL image
(out, embedding) = infer_image(net, image, transform, return_embedding=True)
# embedding is a NumPy array with shape of (1, 320)
Detection Feature Map
from PIL import Image
import birder
(net, model_info) = birder.load_pretrained_model("efficientvim_m1_il-common", inference=True)
# Get the image size the model was trained on
size = birder.get_size_from_signature(model_info.signature)
# Create an inference transform
transform = birder.classification_transform(size, model_info.rgb_stats)
image = Image.open("path/to/image.jpeg")
features = net.detection_features(transform(image).unsqueeze(0))
# features is a dict (stage name -> torch.Tensor)
print([(k, v.size()) for k, v in features.items()])
# Output example:
# [('stage1', torch.Size([1, 128, 16, 16])),
# ('stage2', torch.Size([1, 192, 8, 8])),
# ('stage3', torch.Size([1, 320, 4, 4]))]
Citation
@misc{lee2025efficientvimefficientvisionmamba,
title={EfficientViM: Efficient Vision Mamba with Hidden State Mixer based State Space Duality},
author={Sanghyeok Lee and Joonmyung Choi and Hyunwoo J. Kim},
year={2025},
eprint={2411.15241},
archivePrefix={arXiv},
primaryClass={cs.CV},
url={https://arxiv.org/abs/2411.15241},
}
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