BloodNet-Benchmark
收藏Figshare2022-10-27 更新2026-04-08 收录
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https://figshare.com/articles/dataset/BloodNet_An_attention-based_deep_network_for_accurate_efficient_and_costless_bloodstain_time_since_deposition_inference/21291825/4
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<em><strong>BloodNet: An attention-based deep network for accurate, efficient, and costless bloodstain time since deposition inference</strong></em> <br> The time since deposition (TSD) of a bloodstain, i.e., the time of a bloodstain formation is an essential piece of biological evidence in crime scene investigation. The practical usage of some existing microscopic methods (e.g., spectroscopy or RNA analysis technology) is limited, as their performance strongly relies on high-end instrumentation and/or rigorous laboratory conditions. This paper presents a practically applicable deep learning-based method (i.e., <strong>BloodNet</strong>) for efficient, accurate, and costless TSD inference from a macroscopic view, i.e., by using easily accessible bloodstain photos. To this end, we established a benchmark database containing around 50,000 photos of bloodstains with varying TSDs. Capitalizing on such a large-scale database, BloodNet adopted attention mechanisms to learn from relatively high-resolution input images the localized fine-grained feature representations that were highly discriminative between different TSD periods. Also, the visual analysis of the learned deep networks based on the Smooth Grad-CAM tool demonstrated that our BloodNet can stably capture the unique local patterns of bloodstains with specific TSDs, suggesting the efficacy of the utilized attention mechanism in learning fine-grained representations for TSD inference. As a paired study for BloodNet, we further conducted a microscopic analysis using Raman spectroscopic data and a machine learning method based on Bayesian optimization. Although the experimental results show that such a new microscopic-level approach outperformed the state-of-the-art by a large margin, its inference accuracy is significantly lower than BloodNet, which further justifies the efficacy of deep learning techniques in the challenging task of bloodstain TSD inference. Our code is publically accessible via <em>https://github.com/shenxiaochenn/BloodNet</em>. ----data.zip All the bloodstain images have been placed in the appropriate folders according to the corresponding categories.The name of the folder is the tag information corresponding to the image. ----bloodnet50_new.pth The weights corresponding to the classification model. ----bloodnet50_reg.pth The weights corresponding to the regression model. ----bloodnet(small).pth The weights corresponding to the small classification model. ----seresnet50-60a8950a85b2b.pkl The weights corresponding to the Imagenet pretrain model. ----bloodstain_information.csv The detailed information of each bloodstain. <br>
提供机构:
chen, shen
创建时间:
2022-10-27



