基于梯度对数场特征空间和双三次插值的低分辨率人脸跟踪系统

T. Vijayan, N. A. Kumar, K. Sivachandar
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引用次数: 0

摘要

人脸跟踪已经成为一个活跃的研究领域,它对视频监控等应用有很大的帮助。光照差异、人脸姿态变化、遮挡和背景杂波等因素使人脸跟踪成为一个具有挑战性的问题。尽管已经提出了一些相关的工作来辅助无约束视频中的人脸跟踪,但现有的方法可能无法在视频监控应用中产生效果。这主要是因为低分辨率人脸包含较少的信息数据,并且面部照明的主要转换使得跟踪无效。为了克服这一问题,本文提出了一种新的光照归一化算法,并将其与GLF相结合用于人脸跟踪,以提高跟踪系统的整体性能。实验结果表明,所提出的基于glf的跟踪器在明显的澄清变化下工作良好,并且优于许多现有的跟踪算法。
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An improved low-resolution face tracker system using gradient logarithm field feature space and bi-cubic interpolation
Face tracking has become an active area of research it is very much helpful in applications such as video surveillance. The factors like illumination discrepancy, face pose variations, occlusions, and background clutter makes face tracking a challenging issue. Even though, a number of related work have been proposed to assist face tracking in unrestrained videos, the existing approaches may not be productive in video surveillance applications. This is mainly because of the fact that low-resolution face comprises of lesser informative data, and main transformations in illumination on the face make the tracking unproductive. In order to overcome this issue, this paper proposes a novel algorithm for illumination normalization and it is combined with the GLF for face tracking for improving the overall performance of the tracker system. Experimental results show that the proposed GLF-based tracker works well under significant clarification changes and outperforms many existing tracking algorithms.
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