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Action Recognition in Video Using Human Keypoint Detection

机译:使用人类关键点检测的视频动作识别

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With the popularization of the internet and the increase of video facilities, the recognition and segmentation of actions in the video have become research highlights of high application value. Different from images, the information in the video is more complex and also brings time sequences as a new dimension. This paper proposes a video action recognition and segmentation model in the human keypoint detection task. The main contributions are as follows:1) Based on the speech signal processing method, this paper designs an analysis framework for video action, which consists of three steps. The first step is to obtain data from the key point frame of the human body; the second is the action segmentation model; the third is to visualize the model results;2)the dynamic time warping algorithm is used and improved from calculation cost and constraint conditions;3) a distance function is designed to measure the similarity between time series. Four kinds of features are introduced, and the final distance is the weighted sum of the four kinds of features;4) a non-maximum suppression method is designed to filter the overlapped segments to get the final results. Experiment design verifies the validity of the proposed model and the importance of proposed features is illustrated.
机译:随着互联网的普及和视频设备的增多,视频中动作的识别和分割已成为具有较高应用价值的研究亮点。与图像不同,视频中的信息更加复杂,并且将时间序列作为一个新的维度。本文提出了一种在人类关键点检测任务中的视频动作识别和分割模型。主要工作包括以下几个方面:1)基于语音信号处理方法,设计了视频动作分析框架,包括三个步骤。第一步是从人体的关键点框架获取数据;第二个是动作细分模型;第三是可视化模型结果; 2)使用动态时间规整算法,并从计算成本和约束条件出发对其进行改进; 3)设计了距离函数以测量时间序列之间的相似性。介绍了四种特征,最终距离是四种特征的加权和; 4)设计了一种非最大抑制方法,对重叠的部分进行滤波,得到最终结果。实验设计验证了所提出模型的有效性,并说明了所提出特征的重要性。

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