基于简单动态特征的唇读和一种新的特征提取ROI

Abhilash Jain, G. Rathna
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引用次数: 1

摘要

聋人或听力障碍者大多依靠唇读来理解语言。它们展示了人类仅凭视觉线索理解语言的能力。自动唇读系统的工作原理与此类似——它只从视觉信息中获取语音或文本,比如一个人的面部视频。本文提出了一种用于语音数字识别的自动唇读系统。该系统通过在视频输入的连续帧之间创建不同的图像来使用简单的动态特征。使用该技术,在说话人依赖和说话人独立的测试场景下,单词识别率分别达到83.79%和65.58%。介绍了一种新的扩展感兴趣区域(ROI),包括下颌和颈部区域。大多数唇读算法仅使用嘴/唇区域进行相关特征提取。与简单的嘴型ROI相比,提出的ROI在依赖于说话人的测试中提高了4%,在独立于说话人的测试中提高了11%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lip Reading using Simple Dynamic Features and a Novel ROI for Feature Extraction
Deaf or hard-of-hearing people mostly rely on lip-reading to understand speech. They demonstrate the ability of humans to understand speech from visual cues only. Automatic lip reading systems work in a similar fashion - by obtaining speech or text from just the visual information, like a video of a person's face. In this paper, an automatic lip reading system for spoken digit recognition is presented. The system uses simple dynamic features by creating difference images between consecutive frames of the video input. Using this technique, word recognition rates of 83.79% and 65.58% are achieved in speaker-dependent and speaker-independent testing scenarios, respectively. A novel, extended region-of-interest (ROI) which includes lower jaw and neck region is also introduced. Most lip-reading algorithms use only the mouth/lip region for relevant feature extraction. Over simple mouth as the ROI, the proposed ROI improves the performance by 4% in speaker-dependent tests and by 11% in speaker-independent tests.
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