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Action recognition using random forest prediction with combined pose-based and motion-based features

机译:使用随机森林预测结合基于姿势和基于运动的特征进行动作识别

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In this paper, we propose a novel human action recognition system that uses random forest prediction with statistically combined pose-based and motion-based features. Given a set of training and test image sequences (videos), we first adopt recent techniques that extract low-level features: motion and pose features. Motion-based features which represent motion patterns in the consecutive images, are formed by 3D Haar-like features. Pose-based features are obtained by the calculation of scale invariant contour-based features. Then using statistical methods, we combine these low-level features to a novel compact representation which describes the global motion and the global pose information in the whole image sequence. Finally, Random Forest classification is employed to recognize actions in the test sequences by using this novel representation. Our experimental results on KTH and Weizmann datasets have shown that the combination of pose-based and motion-based features increased the system recognition accuracy. The proposed system also achieved classification rates comparable to the state-of-the-art approaches.
机译:在本文中,我们提出了一种新颖的人类动作识别系统,该系统使用具有统计组合的基于姿势和基于动作的特征的随机森林预测。给定一组训练和测试图像序列(视频),我们首先采用最新技术来提取低级特征:运动和姿势特征。代表连续图像中运动模式的基于运动的特征是由类似3D Haar的特征形成的。通过计算比例尺不变的基于轮廓的特征可以获得基于姿势的特征。然后,使用统计方法,我们将这些低级特征组合到一个新颖的紧凑表示形式中,该表示形式描述了整个图像序列中的全局运动和全局姿势信息。最后,通过使用这种新颖的表示法,随机森林分类被用来识别测试序列中的动作。我们在KTH和Weizmann数据集上的实验结果表明,基于姿势的特征和基于运动的特征的组合提高了系统识别的准确性。拟议的系统还实现了与最新方法相当的分类率。

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