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A compressed multiple feature and adaptive scale estimation method for correlation filter-based visual tracking

机译:基于相关滤波器的视觉跟踪的压缩多特征自适应尺度估计方法

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The core part of the popular tracking-by-detection trackers is the discriminative classifier, which distinguishes the tracked target from the surrounding environment. Correlation filter-based visual tracking methods have the advantage of computing efficiency over the traditional methods by exploiting the properties of circulant matrix in learning process, and the significant progress in efficiency has been achieved by making use of the fast Fourier transform at detection and learning stages. But most existing correlation filter-based approaches are mainly restricted to translation estimation, which are susceptible to drifting in long-term tracking. In this article, a compressed multiple feature and adaptive scale estimation method is presented, which uses multiple features, including histogram of orientation gradients, color-naming, and raw pixel value to further improve the stability and accuracy of translation estimation. And for the scale estimation, another correlation filter is trained, which uses the compressed histogram of orientation gradients and raw pixel value to construct a multiscale pyramid of the target, and the optimal scale is obtained by exhaustively searching. The translation and scale estimation are unified with an iterative searching strategy. Extensively experimental results on the benchmark data set of scale variation show that the performance of the proposed compressed multiple feature and adaptive scale estimation algorithm is competitive against state-of-the-art methods with scale estimation capabilities in terms of robustness and accuracy.
机译:流行的按检测跟踪的跟踪器的核心部分是判别式分类器,该分类器将被跟踪的目标与周围环境区分开。基于相关滤波器的视觉跟踪方法通过在学习过程中利用循环矩阵的性质,具有比传统方法更高的计算效率,并且通过在检测和学习阶段使用快速傅里叶变换,在效率上取得了重大进展。 。但是大多数现有的基于相关滤波器的方法主要限于转换估计,在长期跟踪中容易漂移。本文提出了一种压缩的多特征自适应尺度估计方法,该方法利用方位梯度直方图,颜色命名和原始像素值等多个特征进一步提高了平移估计的稳定性和准确性。为了进行比例估计,训练了另一个相关滤波器,该滤波器使用方向梯度的压缩直方图和原始像素值构造目标的多比例金字塔,并通过详尽搜索获得最佳比例。翻译和比例尺估计采用迭代搜索策略统一。在标度变化的基准数据集上进行的广泛实验结果表明,所提出的压缩多特征和自适应标度估计算法的性能在鲁棒性和准确性方面,与具有标度估计功能的最新方法相比具有竞争力。

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