Welcome to Francis Academic Press

The Frontiers of Society, Science and Technology, 2022, 4(10); doi: 10.25236/FSST.2022.041002.

Application Strategy of Security Detection Technology in the Background of Computer Vision

Author(s)

Chao Hu, Weibin Qiu, Weijie Wu

Corresponding Author:
​Chao Hu
Affiliation(s)

Unicom (Shanghai) Industrial Internet Co. Ltd., Shanghai, 201700, China

Abstract

At present, the application of computer technology is more and more extensive. The monitoring data can be processed by computer, which can show many advantages such as timeliness, accuracy and intuition. Therefore, computer vision has become an important foundation in safety detection. In order to promote the application effect of security detection technology under the background of computer vision, it is necessary to first clarify the meaning of computer vision and the theoretical basis of security detection technology based on this background, understand the relevant requirements and functions, and finally make a reasonable design for the corresponding computing system, Only in this way can we realize the effective application of safety detection technology under the background of computer vision for reference. 

Keywords

Computer vision; Safety detection technology; Application Policy

Cite This Paper

Chao Hu, Weibin Qiu, Weijie Wu. Application Strategy of Security Detection Technology in the Background of Computer Vision. The Frontiers of Society, Science and Technology (2022) Vol. 4, Issue 10: 6-10. https://doi.org/10.25236/FSST.2022.041002.

References

[1] Wang Maosen. Application of computer vision technology in agricultural product quality inspection [J]. Digital communication world, 2022 (6): 129-131.

[2] Sun longlong, Wang Qikuan, Shi Kai, et al. A review of computer vision research in the field of building safety based on knowledge atlas [J]. Safety and environmental engineering, 2021, 28 (2): 44-49.

[3] Wang Jie. Safety helmet detection and identification method for workers based on computer vision and deep learning [D]. Anhui: Hefei University of technology, 2021.

[4] Cui Bing, Zhang Jinyue, Liu Xiangchi. Fatigue operation detection method of construction machinery operators based on computer vision technology [J]. Civil engineering information technology, 2021, 13 (3): 65-74.

[5] Wang Jinghua, Wang Liguan, Bi Lin. Unmanned obstacle detection technology of mine electric locomotive based on computer vision technology [J]. Gold science and technology, 2021, 29 (1): 136-146.

[6] Yao Zui, Lv Jianqiu, Xiang Cheng, et al. Research on Application of computer vision in external quality inspection of agricultural products [J]. Food industry science and technology, 2019, 40 (14): 363-368.

[7] Pan Leiqing, Tu Kang, Zhan Ge, et al. Egg crack detection based on computer vision and acoustic response information fusion [J]. Journal of agricultural engineering, 2010, 26 (11): 332-337.