A selective spatio-temporal interest point detector for human action recognition in complex scenes

Bhaskar Chakraborty, M. B. Holte, T. Moeslund, Jordi Gonzàlez, F. X. Roca
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引用次数: 49

Abstract

Recent progress in the field of human action recognition points towards the use of Spatio-Temporal Interest Points (STIPs) for local descriptor-based recognition strategies. In this paper we present a new approach for STIP detection by applying surround suppression combined with local and temporal constraints. Our method is significantly different from existing STIP detectors and improves the performance by detecting more repeatable, stable and distinctive STIPs for human actors, while suppressing unwanted background STIPs. For action representation we use a bag-of-visual words (BoV) model of local N-jet features to build a vocabulary of visual-words. To this end, we introduce a novel vocabulary building strategy by combining spatial pyramid and vocabulary compression techniques, resulting in improved performance and efficiency. Action class specific Support Vector Machine (SVM) classifiers are trained for categorization of human actions. A comprehensive set of experiments on existing benchmark datasets, and more challenging datasets of complex scenes, validate our approach and show state-of-the-art performance.
一种用于复杂场景中人类动作识别的选择性时空兴趣点检测器
人类行为识别领域的最新进展是将时空兴趣点(STIPs)用于基于局部描述符的识别策略。在本文中,我们提出了一种新的STIP检测方法,该方法将环绕抑制与局部和时间约束相结合。我们的方法与现有的STIP检测器有很大的不同,通过检测更多可重复的、稳定的和独特的人类参与者的STIP来提高性能,同时抑制不需要的背景STIP。对于动作表示,我们使用局部N-jet特征的视觉词袋(BoV)模型来构建视觉词的词汇表。为此,我们将空间金字塔和词汇压缩技术相结合,提出了一种新的词汇构建策略,从而提高了性能和效率。特定于动作类的支持向量机(SVM)分类器被训练用于对人类动作进行分类。在现有的基准数据集和复杂场景的更具挑战性的数据集上进行了一组全面的实验,验证了我们的方法并显示了最先进的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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