基于个体行为识别和人群分组联合学习的群体活动识别

Chihiro Nakatani, Kohei Sendo, N. Ukita
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引用次数: 5

摘要

为了提高群体活动的识别能力,本文提出了个体行为识别与人分组的联合学习。通过联合学习,在两个相似的任务(即个体动作识别和人员分组)之间共享信息,从而相互纠正这两个任务的错误。这种共同学习也提高了小组活动识别的准确性。我们提出的方法被设计成由任何单独的动作识别方法组成一个组件。用各种IAR方法验证了该方法的有效性。通过将现有的群体活动识别方法与所提出的方法进行集成,与同类SOTA群体活动识别方法相比,我们获得了最好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Group Activity Recognition Using Joint Learning of Individual Action Recognition and People Grouping
This paper proposes joint learning of individual action recognition and people grouping for improving group activity recognition. By sharing the information between two similar tasks (i.e., individual action recognition and people grouping) through joint learning, errors of these two tasks are mutually corrected. This joint learning also improves the accuracy of group activity recognition. Our proposed method is designed to consist of any individual action recognition methods as a component. The effectiveness is validated with various IAR methods. By employing existing group activity recognition methods for ensembling with the proposed method, we achieved the best performance compared to the similar SOTA group activity recognition methods.
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