实时语音情感识别系统中固定维语音表示的研究

Wei Rao, Zhi Hao Lim, Qing Wang, Chenglin Xu, Xiaohai Tian, E. Chng, Haizhou Li
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引用次数: 2

摘要

实时语音情感识别系统在实际应用中不仅需要达到较高的准确率,还需要考虑对内存的要求和运行时间。本文的重点是为实时语音情感识别系统探索具有较低内存要求和运行时间的有效特征。为此,考虑了固定维语音表示,因为它具有较低的内存需求和较低的计算成本。研究了高阶描述符和i向量两种固定维语音表示,并将其与传统的基于帧的低阶特征描述符在准确率和计算成本方面进行了比较。在IEMOCAP数据库上的实验结果表明,虽然高级描述符和i-vector只包含与低级描述符相比的紧凑信息,但它们的性能略好于低级描述符。实验还表明,与低级描述符和高级描述符相比,i向量的计算成本要小得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigation of fixed-dimensional speech representations for real-time speech emotion recognition system
The real-time speech emotion recognition system is not only required to achieve the high accuracy, but also is needed to consider the memory requirement and running time in the practical application. This paper focuses on exploring the effective features with lower memory requirement and running time for the real-time speech emotion recognition system. To this end, the fixed-dimensional speech representations are considered because of its lower memory requirement and less computation cost. This paper investigates two types of fixed-dimensional speech representations which are high level descriptors and i-vectors and compares them with the conventional frame-based features low level descriptors in terms of accuracy and computation cost. Experimental results on IEMOCAP database show that although high level descriptors and i-vectors only contain the compact information comparing with low level descriptors, they achieve slightly better performance than low level descriptors. Experiments also demonstrate that the computation cost of i-vectors is much less than that of low level descriptors and high level descriptors.
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