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On the Effect of Human Body Parts in Large Scale Human Behaviour Recognition

机译:人体部位在大规模人类行为识别中的作用

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Automatic analysis of human behaviour in large collections of videos is gaining interest, even more so with the advent of file sharing sites such as YouTube. Human behaviour analysis methods can be categorised into three classes based on the type of features. The three representations are local, region of interest and densely sampled based representations. Local feature representation, such as Spatio-Temporal Interest Points (STIP), are quite popular for modelling temporal aspects in human action recognition. Region of Interest (ROI) based feature representations try to capture and represent human body part regions. Densely sampled representations capture information at uniformly spaced intervals spread in space and temporal directions of the given video. In this paper, we investigate the effect of human body part (ROI) information in large scale action recognition. Further, we also investigate the effect of its fusion with Harris 3D points (local representation) information and densely sampled representations. All experiments use a Bag-of-Words framework. We present our results on large class benchmark databases such as the UCF50 and HMDB51 datasets.
机译:在大量视频中对人类行为的自动分析越来越引起人们的兴趣,随着文件共享网站(例如YouTube)的出现,这一点变得更加重要。根据特征的类型,人类行为分析方法可以分为三类。这三种表示形式是局部,关注区域和基于密集采样的表示形式。时空兴趣点(STIP)等局部特征表示法在人类动作识别中的时态方面建模方面非常受欢迎。基于兴趣区域(ROI)的特征表示尝试捕获并表示人体部位区域。密集采样的表示以均匀间隔的间隔捕获信息,这些间隔分布在给定视频的空间和时间方向上。在本文中,我们研究了人体部位(ROI)信息在大规模动作识别中的作用。此外,我们还研究了其与Harris 3D点(局部表示)信息和密集采样表示的融合效果。所有实验都使用“词袋”框架。我们在大型类基准数据库(例如UCF50和HMDB51数据集)上展示我们的结果。

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