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Spatiotemporal saliency and sub action segmentation for human action recognition

机译:时空显着性和子动作分段,用于人类动作识别

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Human Action Recognition is a significant and challenging field of interest in Research and Industry. In this paper, the Selective Spatiotemporal Interest Points (Selective STIPs) are extracted from the input video and is labeled using a dictionary. The actions are segmented into sub-actions, and then the temporal and spatial structure is captured. The segmentation is done on the basis of interest point density. The spatial and temporal relationships between the labeled STIPs is represented using Space Salient and Time Salient directed graphs respectively. Time Salient pairwise feature (TSP) and Space Salient pairwise feature (SSP) is computed from corresponding directed graphs. The Selective STIP suppresses the background STIPs and detects more robust STIPs from the actors which improves performance of recognition. The Bag-of-Visual Words model combined with TSP and SSP for human action classification provides a more promising result.
机译:人体动作识别是研究和工业领域一个重要且具有挑战性的领域。在本文中,从输入视频中提取选择性时空兴趣点(Selective ST时空兴趣点),并使用字典对其进行标记。将动作细分为子动作,然后捕获时间和空间结构。分割是基于兴趣点密度进行的。分别使用空间显着图和时间显着图来表示标记的STIP之间的时空关系。从相应的有向图计算出时间显着的成对特征(TSP)和空间显着的成对特征(SSP)。选择性STIP可以抑制背景STIP,并从参与者中检测到更强大的STIP,从而提高识别性能。结合了TSP和SSP的“视觉袋”单词模型对人类行为进行了分类,从而提供了更加有希望的结果。

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