Electric Power Monitor tracking algorithm based on Improved SiamFC

Yuefeng Yang, Hui-san Wang, X. Shi, Weihua Cai, Tianqi Li, Nan Cao, Wei Wang, Haitao Qu
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引用次数: 1

Abstract

With the deep application of intelligent safety monitoring technology in the field of power engineering construction, computer vision technology represented by object tracking has become one of the important research contents in the field of smart grid. In the industrial visual recognition and early warning system, it is difficult to achieve accurate and real-time tracking. In this study, we propose a real-time target tracking algorithm based on improved SiamFC. The second convolution layer in the original siamese network structure is replaced by deeply separable convolution, improves the tracking speed by reducing parameter calculation, meet the need of real-time tracking in practical application. In the third convolution layer, mixed deep convolution is used to extract features through convolution kernels of different dimensions to achieve multi-feature fusion, extract features with stronger robustness, and improve the network's ability to distinguish objects and backgrounds. The performance of the algorithm is tested on OTB2015 data set and power construction site surveillance video. Experimental results show that compared with the SiamFC algorithm, the algorithm has a certain improvement in the tracking success rate, tracking accuracy and tracking speed, and can meet the tracking requirements in power construction scenarios.
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基于改进SiamFC的电力监控跟踪算法
随着智能安全监控技术在电力工程建设领域的深入应用,以目标跟踪为代表的计算机视觉技术已成为智能电网领域的重要研究内容之一。在工业视觉识别预警系统中,难以实现准确、实时的跟踪。在本研究中,我们提出了一种基于改进SiamFC的实时目标跟踪算法。将原连体网络结构中的第二层卷积层替换为深度可分卷积,通过减少参数计算提高了跟踪速度,满足了实际应用中实时跟踪的需要。在第三层卷积中,采用混合深度卷积,通过不同维数的卷积核提取特征,实现多特征融合,提取出鲁棒性更强的特征,提高网络区分物体和背景的能力。在OTB2015数据集和电力施工现场监控视频上对算法的性能进行了测试。实验结果表明,与SiamFC算法相比,该算法在跟踪成功率、跟踪精度和跟踪速度上都有一定的提高,能够满足电力建设场景下的跟踪需求。
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