Abstract

In this paper, a deep confidence neural network algorithm is used to design and deeply analyze the risk warning model for stadium operation. Many factors, such as video shooting angle, background brightness, diversity of features, and the relationship between human behaviors, make feature attribute-based behavior detection a focus of researchers' attention. To address these factors, researchers have proposed a method to extract human behavior skeleton and optical flow feature information from videos. The key of the deep confidence neural network-based recognition method is the extraction of the human skeleton, which extracts the skeleton sequence of human behavior from a surveillance video, where each frame of the skeleton contains 18 joints of the human skeleton and the confidence value estimated for each frame of the skeleton, and builds a deep confidence neural network model to classify the dangerous behavior based on the obtained skeleton feature information combined with the time vector in the skeleton sequence and determine the danger level of the behavior by setting the corresponding threshold value. The deep confidence neural network uses different feature information compared with the spatiotemporal graph convolutional network. The deep confidence neural network establishes the deep confidence neural network model based on the human optical flow information, combined with the temporal relational inference of video frames. The key of the temporal relationship network-based recognition method is to extract some frames from the video in an orderly or random way into the temporal relationship network. In this paper, we use several methods for comparison experiments, and the results show that the recognition method based on skeleton and optical flow features is significantly better than the algorithm of manual feature extraction.

Highlights

  • People’s fitness and health needs and the requirements of implementing the national fitness strategy for all are interdependent. e implementation of a health strategy requires a shift from being disease-centered to health-centered [1]

  • We must actively promote the indepth integration of national fitness and national health, so that health knowledge and active participation in physical activity become the general quality and ability of the people and give full play to the unique advantages of sports in health promotion, disease prevention, and rehabilitation [2]. e rapid development of modern information technology is bringing new opportunities for the development of sports, using the Internet, Internet of ings, big data, cloud computing, artificial intelligence, and other modern information technologies combined with national fitness, to create an integrated online and offline public service system for national fitness and provide more convenient, efficient and accurate sports services for the community residents

  • Wang et al sorted out the key contract terms and possible risks that need to be focused on according to many Engineering Procurement Construction (EPC) contracts, as well as some problems that project managers often encounter during the project progress, to provide a basis for managers to perform contract risk management [7]

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Summary

Research Article

Received 3 June 2021; Revised 22 June 2021; Accepted 29 June 2021; Published 5 July 2021. A deep confidence neural network algorithm is used to design and deeply analyze the risk warning model for stadium operation. Many factors, such as video shooting angle, background brightness, diversity of features, and the relationship between human behaviors, make feature attribute-based behavior detection a focus of researchers’ attention. To address these factors, researchers have proposed a method to extract human behavior skeleton and optical flow feature information from videos. We use several methods for comparison experiments, and the results show that the recognition method based on skeleton and optical flow features is significantly better than the algorithm of manual feature extraction

Introduction
Related Work
Confidence network training results
First level indicator
Risk response
ICN algorithm Deep confidence neural network algorithm
Risk three Risk four
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