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SimCLR-Enhanced MammalHairNet: Advancing Species Identification Through Hair Scale Classification

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NIAID Data Ecosystem2026-05-02 收录
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https://zenodo.org/record/14835823
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ori_all_training.tar Contains all raw data outside the test set hair_2025_per15.tar Contains all raw data in the test set SAM_not_in_per15_all_filter_rename.tar Contains all the data outside the test set, after SAM semantic segmentation sam_2025_85_rgb_720_per100_50_30.tar The dataset comprises data excluded from the test set, which have been processed through SAM-based semantic segmentation followed by a series of augmentation techniques, including random contrast adjustment, cropping, noise addition, mirroring, and rotation. SAM_15_2025_100_oriname.tar & sam_2025_15_100_rgb.tar Note that these two test sets only have some name adjustments(Orangutan->Bornean_orangutan;Red_deer->Wapiti;Wolf->Grey_wolf;Chinese_Water_deer->Water_deer), but the images are the same.  The images within these two compressed packages vary in resolution; however, all the image sizes are adjusted to [224 224] when classifying. seg.tar Semantic Segmentation Models and Annotated Datasets code&model.tar Contains five folders Evaluation_Metrics, fine_tuning, img_cropped_and_augmented, resnet, and SimCLR
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2025-02-27
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