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Behavior Histograms for Action Recognition and Human Detection

机译:行为直方图用于动作识别和人体检测

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This paper presents an approach for human detection and simultaneous behavior recognition from images and image sequences. An action representation is derived by applying a clustering algorithm to sequences of Histogram of Oriented Gradient (HOG) descriptors of human motion images. For novel image sequences, we first detect the human by matching extracted descriptors with the prototypical action primitives. Given a sequence of assigned action primitives, we can build a histogram from observed motion. Thus, behavior can be classified by means of histogram comparison, interpreting behavior recognition as a problem of statistical sequence analysis. Results on publicly available benchmark-data show a high accuracy for action recognition.
机译:本文提出了一种从图像和图像序列进行人类检测和同时行为识别的方法。通过将聚类算法应用于人类运动图像的定向梯度直方图(HOG)描述符的直方图序列,可以得出动作表示。对于新颖的图像序列,我们首先通过将提取的描述符与原型动作原语进行匹配来检测人。给定一系列指定的动作原语,我们可以从观察到的运动中构建直方图。因此,可以通过直方图比较将行为分类,将行为识别解释为统计序列分析的问题。公开基准数据的结果显示了动作识别的高精度。

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