Action recognition in videos

Christian Wolf, A. Baskurt
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引用次数: 10

Abstract

Applications such as video surveillance, robotics, source selection, and video indexing often require the recognition of actions based on the motion of different actors in a video. Certain applications may require assigning activities to several predefined classes, while others may rely on the detection of abnormal or infrequent activities. In this summary we provide a survey of dominant models and methods and discuss recent developments in this domain. We briefly describe two recent contributions: joint level feature and sequence learning, as well as space-time graph matching.
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视频中的动作识别
视频监控、机器人、源选择和视频索引等应用通常需要基于视频中不同参与者的运动来识别动作。某些应用程序可能需要将活动分配给几个预定义的类,而其他应用程序可能依赖于检测异常或不频繁的活动。在这个总结中,我们提供了一个主要的模型和方法的调查,并讨论了该领域的最新发展。我们简要介绍了最近的两个贡献:联合水平特征和序列学习,以及时空图匹配。
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