The Influence of Temporal Information on Human Action Recognition with Large Number of Classes

O. V. R. Murthy, Roland Göcke
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引用次数: 5

Abstract

Human action recognition from video input has seen much interest over the last decade. In recent years, the trend is clearly towards action recognition in real-world, unconstrained conditions (i.e. not acted) with an ever growing number of action classes. Much of the work so far has used single frames or sequences of frames where each frame was treated individually. This paper investigates the contribution that temporal information can make to human action recognition in the context of a large number of action classes. The key contributions are: (i) We propose a complementary information channel to the Bag-of- Words framework that models the temporal occurrence of the local information in videos. (ii) We investigate the influence of sensible local information whose temporal occurrence is more vital than any local information. The experimental validation on action recognition datasets with the largest number of classes to date shows the effectiveness of the proposed approach.
时间信息对大类别人类动作识别的影响
在过去的十年里,从视频输入中识别人类行为已经引起了人们的极大兴趣。近年来,随着动作类数量的不断增加,现实世界中无约束条件(即未采取行动)的动作识别趋势明显。到目前为止,大部分工作都是使用单个帧或帧序列,其中每个帧都被单独处理。本文研究了在大量动作类别的背景下,时间信息对人类动作识别的贡献。本文的主要贡献有:(i)我们提出了一个与词袋框架互补的信息通道,该框架对视频中局部信息的时间发生进行建模。(ii)我们研究了敏感的局部信息的影响,这些信息的时间出现比任何局部信息都重要。在迄今为止类数最多的动作识别数据集上进行的实验验证表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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