语音活动检测中的扩展最小分类错误训练

T. Arakawa, Haitham Al-Hassanieh, M. Tsujikawa, R. Isotani
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引用次数: 2

摘要

语音活动检测(VAD)是语音处理的基础部分。多种声学特征的组合是提高VAD在各种噪声条件下鲁棒性的有效途径。已经提出了几种特征组合方法,其中基于最小分类误差(MCE)训练优化特征值的权值。我们通过引入一种新的全帧判别函数来改进这些基于mce的方法。所提出的方法考虑到错误接受率和错误拒绝率之间的比率以及使用诸如宿醉等整形程序的影响来优化组合权重。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extended Minimum Classification Error Training in Voice Activity Detection
Voice Activity Detection (VAD) is a fundamental part of speech processing. Combination of multiple acoustic features is an effective approach to make VAD more robust against various noise conditions. There have been proposed several feature combination methods, in which weights for feature values are optimized based on Minimum Classification Error (MCE) training. We improve these MCE-based methods by introducing a novel discriminative function for whole frames. The proposed method optimizes combination weights taking into account the ratio between false acceptance and false rejection rates as well as the effect of the use of shaping procedures such as hangover.
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