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An efficient eye detection and tracking system based on particle swarm optimization and adaptive block-matching search algorithm

机译:基于粒子群优化和自适应块匹配搜索算法的高效眼睛检测与跟踪系统

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摘要

The problem of eye detection and tracking in video sequences is very important for a large number of applications ranging from face recognition to gaze tracking. Eye detection and tracking are challenging due to a variety of factors such as eye-blinking, partially closed eyes, and oblique face orientations which tend to significantly limit the efficiency of most eye trackers. In this paper, an efficient eye detection and tracking system is presented to overcome these limitations. The proposed system switches between the particle swarm optimization (PSO) based deformable multiple template matching algorithm and the adaptive block-matching search algorithm to improve the efficiency and robustness of the tracking system. For eye detection, PSO-based deformable multiple template matching is employed to estimate the best candidate of the center of the eyes within an image of the video sequence with the highest accuracy. For eye tracking the block-matching algorithm with adaptive search area is utilized to reduce the computational time required to perform the PSO-based algorithm. Experimental results on the standard VidTlMIT database show that the proposed method outperforms the deformable template matching based methods such as genetic and PSO. Moreover, it achieves better performance compared to model-based methods such as the statistical active appearance model (MM) method and the edge projections based method in terms of accuracy and computational complexity.
机译:视频序列中的眼睛检测和跟踪问题对于从面部识别到凝视跟踪的众多应用而言非常重要。由于多种因素,例如眨眼,部分闭合的眼睛和倾斜的面部朝向等因素,眼睛的检测和跟踪具有挑战性,这些因素往往会严重限制大多数眼睛跟踪器的效率。在本文中,提出了一种有效的眼睛检测和跟踪系统来克服这些限制。所提出的系统在基于粒子群优化(PSO)的可变形多模板匹配算法和自适应块匹配搜索算法之间切换,以提高跟踪系统的效率和鲁棒性。对于眼睛检测,采用基于PSO的可变形多模板匹配来以最高的准确性估计视频序列图像内眼睛中心的最佳候选者。对于眼睛跟踪,利用具有自适应搜索区域的块匹配算法来减少执行基于PSO的算法所需的计算时间。在标准VidTlMIT数据库上的实验结果表明,该方法优于基于可变形模板匹配的方法,如遗传算法和PSO算法。此外,与基于模型的方法(例如统计活动外观模型(MM)方法和基于边缘投影的方法)相比,在准确性和计算复杂性方面,它具有更好的性能。

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