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Human Action Recognition by Extracting Features from Negative Space

机译:通过从负空间提取特征来进行人类动作识别

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A region based technique is proposed here to recognize human actions where features are extracted from the surrounding regions of a human silhouette termed as negative space. Negative space has the ability to describe poses as good as the positive spaces (i.e. silhouette based methods) with the advantage of describing poses by simple shapes. Moreover, it can be combined with silhouette based methods to make an improved system in terms of accuracy and computational costs. Main contributions in this paper are two folded: proposed a method to isolate and discard long shadows from segmented binary images, and generalize the idea of negative space to work under viewpoint changes. The system consists of hierarchical processing of background segmentation, shadow elimination, speed calculation, region partitioning, shape based feature extraction and sequence matching by Dynamic Time Warping. The recognition accuracy of our system for Weizmann dataset is 100% and for KTH dataset is 95.49% which are comparable with state-of-the-art methods.
机译:这里提出一种基于区域的技术来识别人类动作,其中从被称为负空间的人类轮廓的周围区域提取特征。负空间具有与正空间一样好的姿势描述能力(即基于轮廓的方法),其优点在于可以通过简单的形状来描述姿势。而且,它可以与基于轮廓的方法结合以在准确性和计算成本方面构成改进的系统。本文的主要贡献有两个方面:提出了一种从分割的二值图像中分离和丢弃长阴影的方法,并概括了负空间的思想,以便在视点变化时工作。该系统包括背景分割,阴影消除,速度计算,区域划分,基于形状的特征提取以及通过动态时间规整进行的序列匹配的分层处理。我们系统对Weizmann数据集的识别准确度为100%,对于KTH数据集的识别准确度为95.49%,可与最新方法相媲美。

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