Phoneme classification in hardware implemented neural networks

E. Gatt, J. Micallef, Paul Micallef, E. Chilton
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引用次数: 9

Abstract

Among speech researchers, it is widely believed that Hidden Markov Models (HMMs) are the most successful modelling approaches for acoustic events in speech recognition. However, common assumptions limit the classification abilities of HMMs and these can been relaxed by introducing neural networks in the HMM framework. With today's advances in VLSI technology, artificial neural networks (ANNs) can be integrated into a single chip offering adequate circuit complexity required to attain both a high recognition accuracy and an improved learning time. Analogue implementations are considered due to the high processing speeds. The relative performance of different speech coding parameters for use with two different ANN architectures that lend themselves to analogue hardware implementations are investigated. In this case, the dynamic ranges of the different coefficients need to be taken into consideration since they will affect the performance of the analogue chip due to the scaling of the coefficients to voltage signals. The hardware requirements for implementing the two architectures are then discussed.
硬件上的音素分类实现了神经网络
在语音研究者中,隐马尔可夫模型(hmm)被广泛认为是语音识别中声学事件最成功的建模方法。然而,常见的假设限制了HMM的分类能力,可以通过在HMM框架中引入神经网络来放宽这些限制。随着VLSI技术的进步,人工神经网络(ann)可以集成到单个芯片中,提供足够的电路复杂度,以获得高识别精度和改进的学习时间。由于处理速度快,考虑了模拟实现。研究了两种不同的人工神经网络体系结构中不同语音编码参数的相对性能。在这种情况下,需要考虑不同系数的动态范围,因为系数对电压信号的缩放会影响模拟芯片的性能。然后讨论了实现这两种体系结构的硬件需求。
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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