Article ID Journal Published Year Pages File Type
4969881 Pattern Recognition 2017 28 Pages PDF
Abstract
In recent years, significant advances in visual tracking have been made, and numerous outstanding algorithms have been proposed. However, the constraint between tracking accuracy and speed has not yet been comprehensively addressed. In this paper, to address the challenging aspects of visual tracking and, in particular, to achieve accurate real-time tracking, we propose a novel real-time kernel-based visual tracking algorithm based on superpixel clustering and hybrid hash analysis. By adopting superpixel clustering and segmentation, we reconstruct the appearance model of the target and its surrounding context in the initialization step. Via introducing the approach of overlap and intensity analysis, we divide the reconstructed model into several superpixel blocks. Based on the theory of circulant matrices and Fourier analysis, we build a Gaussian kernel correlation filter to roughly locate the position of each candidate block. To further improve the kernel correlation filter method, we compute each block's maximal response value in the confidence map and estimate each block's scale variation based on a peak value comparison. Additionally, we also propose a hybrid hash analysis strategy and integrate it with superpixel analysis for target blocks modification. By calculating a hybrid hash sequence based on L*A*B color and the discrete cosine transform, we conduct superpixel block modification to accurately locate the target and estimate the target's scale variation. Extensive experiments on visual tracking benchmark datasets show that our tracking algorithm outperforms the state-of-the-art algorithms and demonstrate its effectiveness and efficiency.
Keywords
Related Topics
Physical Sciences and Engineering Computer Science Computer Vision and Pattern Recognition
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