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Human Action Recognition Using Optical Flow and Convolutional Neural Networks

机译:使用光流和卷积神经网络的人体动作识别

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The great scientific advance due to Convolutional Neural Networks (ConvNets) for image recognition problems encouraged many researchers to apply ConvNets on video understanding tasks such as human action recognition. However, related state-of-the-art approaches differ in various aspects, making it difficult to compare their results. This work compares some of those approaches in a shared environment using a standard protocol. The results give indication about the effectiveness of fundamental ideas behind proposed approaches and other influencing factors. Based on these findings several adaptations of the parameters and methods have been implemented and tested. Human action recognition problems are commonly approached by facing two complementary aspects of vision. The first one relies on appearance of shown objects, scenes and human poses. It can be considered a regular image recognition task. The second utilizes optical flow estimations to exploit motion information. Since image recognition already is a well-researched area, it is the temporal aspect which is in need of further investigation. The studies were therefore focused on optical flow, which allowed to deeper investigate the less researched sub-discipline.
机译:由于卷积神经网络(Convnette)为图像识别问题的巨大科学推进鼓励许多研究人员在视频理解任务上申请Convnet,例如人类行动识别。然而,相关的最先进的方法在各个方面不同,使得难以比较它们的结果。这项工作使用标准协议将共享环境中的一些方法进行比较。结果表明,拟议方法和其他影响因素背后的基本思想的有效性。基于这些发现,已经实施和测试了几种参数和方法的调整。面对视力的两个互补方面,通常接近人类行动识别问题。第一个依赖于显示的对象,场景和人类姿势的外观。它可以被认为是常规的图像识别任务。第二个利用光学流程估计来利用运动信息。由于图像识别已经是一个研究的区域,因此需要进一步调查的时间方面。因此,研究集中在光学流动上,允许更深地调查较少的研究子学科。

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