基于PCA的唇读视觉DCT特征提取方法

Xiaopeng Hong, H. Yao, Yuqi Wan, Rong Chen
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引用次数: 75

摘要

本文提出了一种基于PCA的方法来降低视觉唇读系统的DCT系数维数。采用基于像素的三级视觉前端。首先,提取DCT或基于块的DCT特征。其次,采用主成分分析法进行降维。最后,将所有特征向量归一化为统一尺度。这项工作研究了这种三阶段的方法,比较了PCA和两种基于DCT的方法,这些方法的特征是手动选择的。后一种方法是根据能量选择PCA系数,而DCT系数的约简倾向于左上角的左侧分量。实验证明,当最终维数低于一定值时,基于PCA的降维任务确实提高了识别精度。他们还表明,DCT和基于块的DCT在唇读任务中的效果相似,略优于PCA。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A PCA Based Visual DCT Feature Extraction Method for Lip-Reading
This paper proposes a PCA based method to reduce the dimensionality of DCT coefficients for visual only lip-reading systems. A three-stage pixel based visual front end is adopted. First, DCT or block-based DCT features are extracted. Second, Principal Component Analysis is applied for dimension reduction. Finally, all the feature vectors are normalized into a uniform scale. This work investigates this three-stage method, comparing with PCA and two DCT based approaches whose features are selected manually. In the latter manner, PCA coefficients are selected according to energy while the reduction of DCT coefficients leans to the left components in the left-top corner. Experiments prove that the dimension reduction task based on PCA does improve the recognition accuracy when the final dimension is below a certain value. They also show that DCT and block-based DCT work similarly for lip reading task, outperforming PCA slightly.
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