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应用LTRNet卷积特征的ECO目标跟踪算法改进 被引量:1

The application of LTRNet convolution features in the improvement of ECO
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摘要 本文提出了一种基于应用高效卷子算子(ECO)改进的LRECT跟踪算法.首先,为了增强网络所提取特征的识别能力,堆叠线性两步(LT)残差结构设计具有32层的线性两步方法性质的残差网络(LTRNet),并且融合该网络浅层与深层卷积特征信息形成跟踪算法的特征提取模块;其次,采用投影矩阵压缩LTRNet提取的高维特征,将压缩特征通过插值处理后,与当前滤波器在傅里叶域进行卷积定位确定目标位置;最后,使用高斯牛顿算法和共轭梯度算法求解以响应误差和惩罚项之和为优化目标的优化问题,实现滤波器和投影矩阵的更新.在OTB2015标准数据集上进行测试实验,结果表明本文所提算法可以实现较高精度的稳健性跟踪. An improved LRECT tracking algorithm based on ECO(efficient convolution operators for tracking)is proposed in this paper.Firstly,in order to enhance the extracted features for object recognition,a 32-convolution layers LTRNet(linear two-step residual network)composed of LT(linear-two step)residual structures is designed as the features extraction module of LRECT,and its shallow and deep features information are fused.Secondly,the projection matrix is used to compress the high-dimensional features extracted by LTRNet,and the compressed features are interpolated,then they are convoluted with the current filter to get the object location in the Fourier domain.Finally,filter and projection matrix are updated by Gauss-Newton and conjugate gradient methods which are applied to solve the optimization problem,and the optimization goal is the sum of response errors and penalties.The results of experiments on the OTB2015 dataset show that the proposed algorithm can achieve robust tracking with a higher accuracy.
作者 陈志旺 王莹 宋娟 姚权允 彭勇 CHEN Zhi-wang;WANG Ying;SONG Juan;YAO Quan-yun;PENG Yong(Engineering Research Center of the Ministry of Education for Intelligent Control System and Intelligent Equipment,Yanshan University,Qinhuangdao Hebei 066004,China;Key Laboratory of Industrial Computer Control Engineering of Hebei Province,Yanshan University,Qinhuangdao Hebei 066004,China;Jiamusi Electric Power Company,State Grid Heilongjiang Electric Power Co.,Ltd,Jiamusi Heilongjiang 154002,China;School of Electrical Engineering,Yanshan University,Qinhuangdao Hebei 066004,China)
出处 《控制理论与应用》 EI CAS CSCD 北大核心 2020年第12期2601-2610,共10页 Control Theory & Applications
基金 国家自然科学基金项目(61573305)资助。
关键词 目标跟踪 应用高效卷子算子(ECO) 具有线性两步方法性质的残差网络(LTRNet) 特征压缩 目标优化 object tracking ECO LTRNet feature compression objective optimization
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