Real Time Lip Reading System Implementation in Embedded Environment

Young-Un Kim, Sun-Kyung Kang, Sung-Tae Jung
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引用次数: 1

Abstract

This paper proposes the real time lip reading method in the embedded environment. The embedded environment has the limited sources to use compared to existing PC environment, so it is hard to drive the lip reading system with existing PC environment in the embedded environment in real time. To solve the problem, this paper suggests detection methods of lip region, feature extraction of lips, and awareness methods of phonetic words suitable to the embedded environment. First, it detects the face region by using face color information to find out the accurate lip region and then detects the exact lip region by finding the position of both eyes from the detected face region and using the geometric relations. To detect strong features of lighting variables by the changing surroundings, histogram matching, lip folding, and RASTA filter were applied, and the properties extracted by using the principal component analysis(PCA) were used for recognition. The result of the test has shown the processing speed between 1.15 and 2.35 sec. according to vocalizations in the embedded environment of CPU 806Mhz, RAM 128MB specifications and obtained 77% of recognition as 139 among 180 words were recognized.
嵌入式环境下实时唇读系统的实现
提出了一种嵌入式环境下的实时唇读方法。与现有PC环境相比,嵌入式环境可使用的资源有限,难以在嵌入式环境中实时驱动现有PC环境下的唇读系统。针对这一问题,本文提出了唇区检测方法、唇区特征提取方法以及适合嵌入式环境的语音词感知方法。该算法首先利用人脸颜色信息对人脸区域进行检测,找出准确的嘴唇区域,然后从检测到的人脸区域中找到双眼的位置,利用几何关系检测出准确的嘴唇区域。采用直方图匹配、唇折、RASTA滤波等方法检测光照变量随环境变化的强烈特征,并利用主成分分析(PCA)提取特征进行识别。测试结果表明,在CPU 806Mhz, RAM 128MB规格的嵌入式环境下,根据语音的处理速度在1.15 ~ 2.35秒之间,180个单词中有139个被识别,识别率达到77%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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