Apply pipelining empirical mode decomposition to accelerate an emotionalized speech processing

F. Chou, Jie-Cyun Huang
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引用次数: 3

Abstract

In this paper, a pipelining empirical mode decomposition is presented to reduce the computing time of the emotionalized spontaneous speaker or speech recognition processing. This is a novel approach for integrating the pipelining technique into the standard empirical mode decomposition of the Hilbert-Huang transform. In addition, there is reduced about 45% of the computing time when the emotionalized spoken signal through our segmentation and pipelining processes. Based on the designed processing of emotionalized spontaneous speaker or speech recognition, the segmented and processed voice signals are recomposed back for constructing the speech and speaker models, or to identify which existed model is the most similar one. In the final part of this paper, a comparison of the speech recognized rate between standard and pipelining empirical mode decompositions are presented, and an equivalent effect in the recognition will be found. In practice, speaker or speech recognitions in an emotionalized spontaneous speech are very difficult. The existing speech recognition methods often fail to capture inherent voiceprint features from an emotionalized speech, such as the voice with a passionate intonation. And some of the existed methods to extract the pure voiceprint from an emotionalized spoken signal are very expensive in computation and time, so that technique is impossible to use in a real-time environment like smart houses. But, this paper presents a solution to improve the emotionalized spontaneous speaker or speech recognition processing to fit the real-time request.
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应用流水线经验模式分解来加速情感化语音处理
本文提出了一种流水线经验模态分解方法,以减少情绪化自发说话人或语音识别处理的计算时间。这是一种将流水线技术集成到希尔伯特-黄变换的标准经验模态分解中的新方法。此外,通过我们的分割和流水线处理,可以减少约45%的情绪化语音信号的计算时间。基于设计的情绪化自发说话人或语音识别处理,对分割后的语音信号进行重构,用于构建语音和说话人模型,或识别现有模型中哪一个最相似。在本文的最后,对标准和流水线经验模式分解的语音识别率进行了比较,发现两者的识别效果相当。在实际操作中,在情绪化的自发讲话中,说话人或说话人的识别是非常困难的。现有的语音识别方法往往无法从情感化的语音中捕获固有的声纹特征,例如带有激情语调的语音。现有的一些从情感化语音信号中提取纯声纹的方法在计算和时间上都非常昂贵,因此该技术不可能在智能家居等实时环境中使用。但是,本文提出了一种改进情绪化自发说话者或语音识别处理的解决方案,以适应实时要求。
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