Abstract

The movement accuracy monitoring of aerobics is mostly performed through three-dimensional reconstruction of aerobic movements. The feature extraction of aerobics is based on the optimal classification decision function, which extracts all the features of aerobics and thus reduces the accuracy of aerobics monitoring. In order to extract the aerobic motion in the background with higher accuracy, a new image-based monitoring method is proposed. First, the Kinect depth image acquisition method is used to preprocess the image, and then Hog3D is used to extract aerobic movement features and analyze the extraction results. This new method solves the problem of video content classification in aerobics precision monitoring. The Adaboost method in probability statistics is used to identify the accuracy of aerobic motions. This paper uses probability function to link the postures of aerobics and forms an action sequence and its ergodic function to take the maximum value of an aerobic exercise. The accuracy of aerobics is monitored by using the method of level by level proportional example. The experimental results show that this method can effectively improve the accuracy of aerobic track monitoring, reduce the energy consumption of aerobic movement accuracy monitoring, and has good use value.

Highlights

  • Ting FengMinistry of Sports and Public Art, Zhengzhou University of Aeronautics, Zhengzhou, Henan 450015, China

  • With the development of the modern society, the demand for fitness is continuously growing among people

  • At present, most of the aerobic movement accuracy detection methods are based on the selection of aerobic movement characteristics by using the wavelet threshold denoising method

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Summary

Ting Feng

Ministry of Sports and Public Art, Zhengzhou University of Aeronautics, Zhengzhou, Henan 450015, China. E feature extraction of aerobics is based on the optimal classification decision function, which extracts all the features of aerobics and reduces the accuracy of aerobics monitoring. In order to extract the aerobic motion in the background with higher accuracy, a new image-based monitoring method is proposed. The Kinect depth image acquisition method is used to preprocess the image, and Hog3D is used to extract aerobic movement features and analyze the extraction results. Is paper uses probability function to link the postures of aerobics and forms an action sequence and its ergodic function to take the maximum value of an aerobic exercise. E experimental results show that this method can effectively improve the accuracy of aerobic track monitoring, reduce the energy consumption of aerobic movement accuracy monitoring, and has good use value The Kinect depth image acquisition method is used to preprocess the image, and Hog3D is used to extract aerobic movement features and analyze the extraction results. is new method solves the problem of video content classification in aerobics precision monitoring. e Adaboost method in probability statistics is used to identify the accuracy of aerobic motions. is paper uses probability function to link the postures of aerobics and forms an action sequence and its ergodic function to take the maximum value of an aerobic exercise. e accuracy of aerobics is monitored by using the method of level by level proportional example. e experimental results show that this method can effectively improve the accuracy of aerobic track monitoring, reduce the energy consumption of aerobic movement accuracy monitoring, and has good use value

Introduction
Compute description
Experimental Results and Analysis

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