基于轨迹和场景的动作识别

Jiqing Liu, Hui Xiang, Yibo Shi, D. Yu
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引用次数: 4

摘要

近年来,轨迹特征在视频动作识别中显示出良好的效果。通常,它们是通过使用KLT跟踪器跟踪特征点或在帧之间匹配SIFT描述符来提取的。然而,轨迹可以是由于动作的兴趣,也可以是由背景或摄像机的运动引起的。为了克服这个问题,采用人体检测来粗略估计视频中人体的位置,并将视频分割为前景/背景区域。在许多情况下,人类的行为不仅可以通过观察运动中的人体来识别,还可以通过观察周围场景的特性来识别。在我们的工作中,我们解决了这个问题,并提出了一种集成场景和人的多种特征的方法。我们用特征包模型来评估我们的视频描述。我们还在两个难度越来越大的数据集上给出了实验结果,并证明了显著的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Action Recognition with Trajectory and Scene
Trajectory features have recently shown promising results to action recognition in video. Typically, they are extracted by tracking feature points with the KLT tracker or matching SIFT descriptors between frames. However, trajectory can be due to the action of interest, but also be caused by background or the camera motion. To overcome the problem, human detection is applied to roughly estimate of the location of the human in the video and segment video into Foreground/Background regions. In many cases, human actions can be identified not only by observing human body in motion, but also properties of the surrounding scene. In our work, we addresse the problem and propose an approach that integrates multiple features from scene and people. We evaluate our video description with a bag of-features model. We also present experimental results on two datasets with an increasing degree of difficulty and demonstrate significant improvements.
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