跨越监督、无监督和半监督学习范式的动物动作分割算法研究

Ari Blau, Evan S Schaffer, Neeli Mishra, Nathaniel J Miska, The International Brain Laboratory, Liam Paninski, Matthew R Whiteway
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引用次数: 0

摘要

行为视频的动作分割是将每个帧标记为属于一个或多个离散类别的过程,是许多研究动物行为的重要组成部分。自动解析离散动物行为的算法种类繁多,包括监督、无监督和半监督学习范式。这些算法(包括基于树的模型、深度神经网络和图形模型)在结构和数据假设方面差异很大。我们利用涵盖苍蝇、小鼠和人类等多个物种的四个数据集,系统地研究了这些不同算法的输出如何与人工标注的相关行为相一致。在研究过程中,我们引入了一种半监督动作分割模型,该模型在监督深度神经网络和无监督图形模型之间架起了一座桥梁。我们发现,在所有数据集上,添加了时间信息的完全监督时空卷积网络在我们的监督指标上表现最佳。
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A study of animal action segmentation algorithms across supervised, unsupervised, and semi-supervised learning paradigms
Action segmentation of behavioral videos is the process of labeling each frame as belonging to one or more discrete classes, and is a crucial component of many studies that investigate animal behavior. A wide range of algorithms exist to automatically parse discrete animal behavior, encompassing supervised, unsupervised, and semi-supervised learning paradigms. These algorithms -- which include tree-based models, deep neural networks, and graphical models -- differ widely in their structure and assumptions on the data. Using four datasets spanning multiple species -- fly, mouse, and human -- we systematically study how the outputs of these various algorithms align with manually annotated behaviors of interest. Along the way, we introduce a semi-supervised action segmentation model that bridges the gap between supervised deep neural networks and unsupervised graphical models. We find that fully supervised temporal convolutional networks with the addition of temporal information in the observations perform the best on our supervised metrics across all datasets.
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