选择单面跟踪技术上具有挑战性的不同背景视频序列使用组合特征

S. Ranganatha, Y. P. Gowramma, G. N. Karthik, A. Sharan
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引用次数: 3

摘要

视频人脸跟踪器最常见的缺陷是在不同背景的视频序列中,由于遮挡、低质量、突然运动以及包含多个人脸时无法跟踪单个人脸等情况而无法跟踪人脸。在本文中,我们提出了一种新的算法来跟踪不同背景视频序列中的人脸。该算法描述了一种改进的KLT跟踪器。我们收集了Eigen, FAST和HOG特征,并将它们组合在一起。这些组合的特征被提供给跟踪器来跟踪人脸。提出的算法在具有挑战性的数据集视频上进行了测试,并使用标准指标测量了性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SELECTED SINGLE FACE TRACKING IN TECHNICALLY CHALLENGING DIFFERENT BACKGROUND VIDEO SEQUENCES USING COMBINED FEATURES
The commonly identified limitations of video face trackers are, the inability to track human face in different background video sequences with the conditions like occlusion, low quality, abrupt motions and failing to track single face when it contain multiple faces. In this paper, we propose a novel algorithm to track human face in different background video sequences with the conditions listed above. The proposed algorithm describes an improved KLT tracker. We collect Eigen, FAST as well as HOG features and combine them together. The combined features are given to the tracker to track the face. The algorithm being proposed is tested on challenging datasets videos and measured for performance using the standard metrics.
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