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Scale Invariant Feature Transform Flow trajectory approach with applications to human action recognition

机译:尺度不变特征变换流轨迹方法及其在人类动作识别中的应用

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In this paper, we apply Scale Invariant Feature Transform (SIFT) Flow, a recently developed method of video representation to human action recognition. SIFT Flow provides a convenient way to express the displacement between keypoints, points which are invariant to scale changes spatially, in two adjacent frames of a video, and it furnishes a compact way to describe the behaviour at keypoints and their neighborhoods as they move in time. A dense trajectory approach using keypoints is developed, and its shape descriptor can be obtained. Local appearance descriptor like histogram of oriented gradients (HOG) evaluated at keypoints, local motion descriptors, like histogram of oriented flows (HOF) and motion boundary histogram (MBH) can be evaluated using SIFT flows. The HOG, HOF MBH, evaluated using SIFT flow, and the keypoint trajectory shape descriptor, together can be used as a feature vector to represent the video. We compare the performance of a number of classifiers to classify the feature vectors, including a bag-of-words approach, support vector machines, linear and nonlinear. It is shown that the proposed novel approach based on keypoints, and SIFT flows produces competitive results when compared with other state-of-the-art results.
机译:在本文中,我们应用Scale不变特征变换(SIFT)流,最近开发的视频表示方法对人类行动识别。 SIFT流提供了一种方便的方法来表达关键点之间的位移,在视频的两个相邻帧中,不变地缩放到空间上的变化,并且它提供了一种紧凑的方式来描述按时间移动时的关键点及其邻居的行为。开发了使用关键点的密集轨迹方法,可以获得其形状描述符。可以使用SIFT流程评估在关键点,局部运动描述符(HOF)和运动边界直方图(MBH)的直方图中评估的面向梯度(HOG)的直方图等局部外观描述符。使用SIFT流程评估的HOG,HOF MBH和KEYPOINT轨迹形状描述符可以用作特征向量以表示视频。我们比较许多分类器的性能来对特征向量进行分类,包括单词袋方法,支持向量机,线性和非线性。结果表明,与其他最先进的结果相比,基于关键点和SIFT流的提出的新方法产生了竞争力。

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