期刊首页 优先出版 当期阅读 过刊浏览 作者中心 关于期刊 English

2020年 第21卷 第10期

《信息与电子工程前沿(英文)》 >> 2020年 第21卷 第10期 doi: 10.1631/FITEE.1900507

Asymmetric discriminative correlation filters for visual tracking

收稿日期: 2019-09-20 录用日期: 2020-10-14 发布日期: 2020-10-14

下一篇 上一篇

摘要

Discriminative correlation filters (DCF) are efficient in and have advanced the field significantly. However, the symmetry of correlation (or convolution) operator results in computational problems and does harm to the generalized translation equivariance. The former problem has been approached in many ways, whereas the latter one has not been well recognized. In this paper, we analyze the problems with the symmetry of circular convolution and propose an asymmetric one, which as a generalization of the former has a weak generalized translation equivariance property. With this operator, we propose a tracker called the asymmetric discriminative correlation filter (ADCF), which is more sensitive to translations of targets. Its asymmetry allows the filter and the samples to have different sizes. This flexibility makes the computational complexity of ADCF more controllable in the sense that the number of filter parameters will not grow with the sample size. Moreover, the normal matrix of ADCF is a block matrix with each block being a two-level block Toeplitz matrix. With this well-structured normal matrix, we design an algorithm for multiplying an × two-level block Toeplitz matrix by a vector with time complexity (log) and space complexity (), instead of (). Unlike DCF-based trackers, introducing spatial or temporal regularization does not increase the essential computational complexity of ADCF. Comparative experiments are performed on a synthetic dataset and four benchmarks, including OTB-2013, OTB-2015, VOT-2016, and Temple-Color, and the results show that our method achieves state-of-the-art performance.

相关研究