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Dense trajectories and motion boundary descriptors for action recognition

机译:动作识别的密集轨迹和运动边界描述符

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This paper introduces a video representation based on dense trajectories and motion boundary descriptors. Trajectories capture the local motion information of the video. A dense representation guarantees a good coverage of foreground motion as well as of the surrounding context. A state-of-the-art optical flow algorithm enables a robust and efficient extraction of dense trajectories. As descriptors we extract features aligned with the trajectories to characterize shape (point coordinates), appearance (histograms of oriented gradients) and motion (histograms of optical flow). Additionally, we introduce a descriptor based on motion boundary histograms (MBH) which rely on differential optical flow. The MBH descriptor shows to consistently outperform other state-of-the-art descriptors, in particular on real-world videos that contain a significant amount of camera motion. We evaluate our video representation in the context of action classification on nine datasets, namely KTH, YouTube, Hollywood2, UCF sports, IXMAS, UIUC, Olympic Sports, UCF50 and HMDB51. On all datasets our approach outperforms current state-of-the-art results.
机译:本文介绍了一种基于密集轨迹和运动边界描述符的视频表示。轨迹捕获视频的本地运动信息。密集的表示保证了对前景运动以及周围环境的良好覆盖。最新的光流算法可实现强大而有效的密集轨迹提取。作为描述符,我们提取与轨迹对齐的特征以表征形状(点坐标),外观(定向梯度的直方图)和运动(光流的直方图)。此外,我们基于运动边界直方图(MBH)引入了一个描述符,该描述符依赖于差分光流。 MBH描述符显示始终优于其他最新描述符,尤其是在包含大量摄像机运动的真实视频中。我们在9个数据集(即KTH,YouTube,Hollywood2,UCF体育,IXMAS,UIUC,奥林匹克体育,UCF50和HMDB51)的动作分类的上下文中评估视频表示。在所有数据集上,我们的方法均优于当前最新的结果。

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