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Motion Analysis Based on Spatial-Temporal Visual Attention

机译:基于时空视觉注意力的运动分析

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Motion analysis can be applied in a number of fields including, e.g. video surveillance, human-computer interaction, smart homes, etc. Due to the large amounts of data associated with usual videos, it is essential for motion analysis algorithms to be computationally efficient. In view of the remarkable efficiency of biological vision systems in dealing with visual information, we propose a motion analysis framework based on spatial-temporal visual attention. More specifically, this paper has adopted a patch-correlation-based approach as the baseline for motion analysis. To achieve computational efficiency, a biologically plausible visual attention model has been adopted, which is based on spatial and temporal features. These features, including intensity, color and motion, are extracted and combined to form salient volumes, i.e. salient spatial-temporal regions in video. During the action matching procedure, only the salient patches or regions are correlated between the query video and the target video, which reduces dramatically the computational cost and improves the robustness of motion analysis. Experimental results of human action detection demonstrate the effectiveness of the proposed framework.
机译:运动分析可以应用于许多领域,包括例如。视频监控,人机交互,智能家居等。由于与普通视频相关的大量数据,运动分析算法必须具有高效的计算能力。鉴于生物视觉系统在处理视觉信息方面的显着效率,我们提出了一种基于时空视觉注意力的运动分析框架。更具体地说,本文采用了基于补丁相关性的方法作为运动分析的基准。为了实现计算效率,已采用了一种生物学上合理的视觉注意模型,该模型基于时空特征。提取并组合这些特征,包括强度,颜色和运动,以形成显着的体积,即视频中的显着的时空区域。在动作匹配过程中,查询视频和目标视频之间只有相关的补丁或区域相关,这大大降低了计算成本,并提高了运动分析的鲁棒性。人体动作检测的实验结果证明了所提出框架的有效性。

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