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Human action recognition based on kinematic similarity in real time

机译:实时基于运动学相似性的人体动作识别

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摘要

Human action recognition using 3D pose data has gained a growing interest in the field of computer robotic interfaces and pattern recognition since the availability of hardware to capture human pose. In this paper, we propose a fast, simple, and powerful method of human action recognition based on human kinematic similarity. The key to this method is that the action descriptor consists of joints position, angular velocity and angular acceleration, which can meet the different individual sizes and eliminate the complex normalization. The angular parameters of joints within a short sliding time window (approximately 5 frames) around the current frame are used to express each pose frame of human action sequence. Moreover, three modified KNN (k-nearest-neighbors algorithm) classifiers are employed in our method: one for achieving the confidence of every frame in the training step, one for estimating the frame label of each descriptor, and one for classifying actions. Additional estimating of the frame’s time label makes it possible to address single input frames. This approach can be used on difficult, unsegmented sequences. The proposed method is efficient and can be run in real time. The research shows that many public datasets are irregularly segmented, and a simple method is provided to regularize the datasets. The approach is tested on some challenging datasets such as MSR-Action3D, MSRDailyActivity3D, and UTD-MHAD. The results indicate our method achieves a higher accuracy.
机译:使用3D姿态数据进行人体动作识别,由于具有捕获人体姿态的硬件功能,因此在计算机机器人界面和模式识别领域越来越受到关注。在本文中,我们提出了一种基于人体运动学相似度的快速,简单,强大的人体动作识别方法。该方法的关键是动作描述符由关节位置,角速度和角加速度组成,可以满足不同的个体大小并消除复杂的归一化。当前帧周围的短滑动时间窗口(大约5帧)内关节的角度参数用于表示人类动作序列的每个姿势帧。此外,在我们的方法中使用了三个改进的KNN(k最近邻算法)分类器:一个用于在训练步骤中获得每个帧的置信度,一个用于估计每个描述符的帧标签,另一个用于对动作进行分类。帧时间标签的其他估计使处理单个输入帧成为可能。此方法可用于困难的,未分段的序列。所提出的方法是有效的并且可以实时运行。研究表明,许多公共数据集被不规则地分割,并且提供了一种简单的方法来规范化数据集。该方法已在一些具有挑战性的数据集上进行了测试,例如MSR-Action3D,MSRDailyActivity3D和UTD-MHAD。结果表明我们的方法达到了较高的精度。

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