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Computer Methods for Automatic Locomotion and Gesture Tracking in Mice and Small Animals for Neuroscience Applications: A Survey

机译:用于神经科学的小鼠和小型动物的自动运动和手势跟踪的计算机方法:一项调查

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摘要

Neuroscience has traditionally relied on manually observing laboratory animals in controlled environments. Researchers usually record animals behaving freely or in a restrained manner and then annotate the data manually. The manual annotation is not desirable for three reasons; (i) it is time-consuming, (ii) it is prone to human errors, and (iii) no two human annotators will 100% agree on annotation, therefore, it is not reproducible. Consequently, automated annotation for such data has gained traction because it is efficient and replicable. Usually, the automatic annotation of neuroscience data relies on computer vision and machine learning techniques. In this article, we have covered most of the approaches taken by researchers for locomotion and gesture tracking of specific laboratory animals, i.e. rodents. We have divided these papers into categories based upon the hardware they use and the software approach they take. We have also summarized their strengths and weaknesses.
机译:神经科学传统上依赖于在受控环境中手动观察实验动物。研究人员通常会记录动物行为自由或拘束的行为,然后手动注释数据。由于以下三个原因,不希望使用手动注释: (i)这很耗时,(ii)容易发生人为错误,并且(iii)没有两个人工注释者会100%同意注释,因此,它是不可复制的。因此,由于这种数据的高效和可复制性,因此自动注释已受到关注。通常,神经科学数据的自动注释依赖于计算机视觉和机器学习技术。在本文中,我们涵盖了研究人员针对特定实验室动物(即啮齿动物)的运动和手势跟踪所采用的大多数方法。我们根据使用的硬件和采用的软件方法将这些论文分为几类。我们还总结了它们的优缺点。

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