多特征唇轮廓检测与跟踪

Q. D. Nguyen, M. Milgram
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引用次数: 1

摘要

唇轮廓的检测与跟踪能够显著提高自动语音识别和人脸识别系统的性能,因此得到了广泛的研究。一个主要的挑战是找到一个鲁棒和准确的方法来检测和跟踪唇轮廓。本文提出并评价了一种基于统计形状模型(如ASM、AAM等)和多特征优化的唇形检测与跟踪新方法。因为,单一的基于特征的对齐方法(如正常轮廓ASM, Gabor ASM,蛇形等)仅在特定条件下表现出良好的性能,但在有噪声的条件下会陷入局部最小值。为了提高算法的收敛性,我们提出在对齐方法中使用法向轮廓、灰度补丁和Gabor小波三个特征,并通过投票方法将它们组合在一起。ASM不能考虑前一帧的时间信息,因此通过使用能够利用时间信息的混合主动形状模型(MF-HASM)取代标准ASM来跟踪唇轮廓。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lip contours detection and tracking with multi features
Lip contours detection and tracking has been studied extensively because it can significantly improve the performance of the automatic speech recognition and face recognition systems. A major challenge is to find a robust and accurate method for detecting and tracking lip contours. In this paper, we propose and evaluate novel method for lip detection and tracking, which is based on the concept of statistic shape models (e.g. ASM, AAM, etc) and optimization of multi features. Since, a single feature-based alignment method (e.g. normal profile ASM, Gabor ASM, snakes, etc) presents good performance only in particular conditions but gets stuck in local minima for noisy conditions. To enhance the convergence, we propose to use three features: normal profile, grey level patches and Gabor wavelets in alignment method and combine them by using a voting approach. The ASM is not able to take into account temporal information from previous frames therefore the lip contours are tracked by replacing the standard ASM with a hybrid active shape model (MF-HASM) which is capable to take advantage of the temporal information.
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