Intelligent Power Grid Video Surveillance Technology Based on Efficient Compression Algorithm Using Robust Particle Swarm Optimization

IF 1.6 Q4 ENERGY & FUELS Wireless Power Transfer Pub Date : 2021-12-30 DOI:10.1155/2021/8192582
Hongyang He, Yue Gao, Y. Zheng, Yi-Ning Liu
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引用次数: 1

Abstract

Companies that produce energy transmit it to any or all households via a power grid, which is a regulated power transmission hub that acts as a middleman. When a power grid fails, the whole area it serves is blacked out. To ensure smooth and effective functioning, a power grid monitoring system is required. Computer vision is among the most commonly utilized and active research applications in the world of video surveillance. Though a lot has been accomplished in the field of power grid surveillance, a more effective compression method is still required for large quantities of grid surveillance video data to be archived compactly and sent efficiently. Video compression has become increasingly essential with the advent of contemporary video processing algorithms. An algorithm’s efficacy in a power grid monitoring system depends on the rate at which video data is sent. A novel compression technique for video inputs from power grid monitoring equipment is described in this study. Due to a lack of redundancy in visual input, traditional techniques are unable to fulfill the current demand standards for modern technology. As a result, the volume of data that needs to be saved and handled in live time grows. Encoding frames and decreasing duplication in surveillance video using texture information similarity, the proposed technique overcomes the aforementioned problems by Robust Particle Swarm Optimization (RPSO) based run-length coding approach. Our solution surpasses other current and relevant existing algorithms based on experimental findings and assessments of different surveillance video sequences utilizing varied parameters. A massive collection of surveillance films was compressed at a 50% higher rate using the suggested approach than with existing methods.
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基于鲁棒粒子群优化高效压缩算法的智能电网视频监控技术
生产能源的公司通过电网将其传输到任何或所有家庭,电网是一个受监管的电力传输中心,充当中间人。当电网出现故障时,它所服务的整个地区就会停电。为了保证电网的平稳有效运行,电网监测系统是必不可少的。计算机视觉是视频监控领域最常用和最活跃的研究应用之一。虽然在电网监控领域已经取得了很大的成就,但是要使大量的电网监控视频数据紧凑地存档和高效地发送,还需要一种更有效的压缩方法。随着现代视频处理算法的出现,视频压缩变得越来越重要。在电网监控系统中,算法的有效性取决于视频数据的发送速率。本文介绍了一种新的电网监控设备视频输入压缩技术。由于视觉输入的冗余性不足,传统技术已不能满足现代技术的要求。因此,需要实时保存和处理的数据量会增加。该技术利用纹理信息相似性对监控视频进行帧编码和减少重复,克服了基于鲁棒粒子群优化(RPSO)的行距编码方法的上述问题。我们的解决方案超越了基于实验结果和利用不同参数对不同监控视频序列进行评估的其他当前和相关现有算法。与现有的方法相比,使用所建议的方法压缩了大量监控录像,压缩率提高了50%。
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来源期刊
Wireless Power Transfer
Wireless Power Transfer ENERGY & FUELS-
CiteScore
2.50
自引率
0.00%
发文量
3
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