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Primate Markerless Pose Estimation and Movement Analysis Using DeepLabCut

机译:使用DEEPLABCUT的灵长类动物无价值姿态估计和运动分析

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The analysis and understanding of primate behavior play a fundamental role in fields such as neuroscience, medicine, psychology, genetics, and more. This paper demonstrates an automatic detection of primate features by using an open-source deep learning toolset, DeepLabCut. We trained the deep neural network to locate 17 features and extract the monkey pose by relating the set of features detected. The model is trained with 5,967 manually annotated monkey images, which achieved train and test set errors of 3.61 and 19.72 unit pixels respectively. We also plotted the feature trajectories across multiple frames to show that the trained model can be used for analyzing behavior.
机译:灵长类动物行为的分析和理解在神经科学,医学,心理学,遗传等领域发挥着基本作用。本文展示了通过使用开源深层学习工具集DEEPLABCUT自动检测灵长类动物特征。我们培训了深神经网络来定位17个功能,并通过相关的特征与检测到的功能进行提取。该模型采用5,967个手动注释的猴像培训,分别实现了3.61和19.72单位像素的列车和测试设置误差。我们还绘制了多个框架的特征轨迹,以显示培训的模型可用于分析行为。

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