利用深度序列进行活动识别的超常规向量

Xiaodong Yang, Yingli Tian
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引用次数: 373

摘要

本文提出了一种基于深度摄像机视频序列的人体活动识别新框架。我们将超表面法线在一个深度序列中聚类形成多法线,多法线用于共同表征局部运动和形状信息。为了全局捕获深度视频的时空顺序,引入自适应时空金字塔将深度视频细分为一组时空网格。然后,我们提出了一种将低级多法线聚合到超正常向量(SNV)中的新方案,该方案可以看作是Fisher核表示的简化版本。在广泛的实验中,我们在MSRAction3D、MSRDailyActivity3D、MSRGesture3D和MSRActionPairs3D四个公共基准数据集上获得的分类结果优于以往发表的所有结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Super Normal Vector for Activity Recognition Using Depth Sequences
This paper presents a new framework for human activity recognition from video sequences captured by a depth camera. We cluster hypersurface normals in a depth sequence to form the polynormal which is used to jointly characterize the local motion and shape information. In order to globally capture the spatial and temporal orders, an adaptive spatio-temporal pyramid is introduced to subdivide a depth video into a set of space-time grids. We then propose a novel scheme of aggregating the low-level polynormals into the super normal vector (SNV) which can be seen as a simplified version of the Fisher kernel representation. In the extensive experiments, we achieve classification results superior to all previous published results on the four public benchmark datasets, i.e., MSRAction3D, MSRDailyActivity3D, MSRGesture3D, and MSRActionPairs3D.
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