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Domain Specific Intent Classification of Sinhala Speech Data

机译:Sinhala语音数据的域特定意图分类

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Building an open domain automatic speech recognition(ASR) system can be accomplished by converting voice into text and performing a text classification on top of the converted text. However, with the inherent challenges in the approach mentioned above, it is not the most feasible way of the deriving intent of speech queries in a specific domain. This paper proposes a domain-specific intent classification for Sinhala language utilizing a feed-forward neural network with backpropagation. For the purposes of this research, a Neural network is trained from Mel Frequency Cepstral Coefficients (MFCC) which are extracted from a Sinhala speech corpus of 10 hours and the performance of the system is evaluated using the recognition accuracy of the speech queries. Further, the proposed solution in the paper introduces the first-of-its-kind for domain-specific intent classification for Sinhala language.
机译:构建开放式域自动语音识别(ASR)系统可以通过将语音转换为文本并在转换后的文本顶部执行文本分类来完成。然而,随着上述方法中的固有挑战,它不是在特定域中导出语音查询的意图的最可行方式。本文提出了利用具有Backpropagation的前馈神经网络的Sinhala语言的域特异性意图分类。出于本研究的目的,神经网络从MEL频率跳跃系数(MFCC)培训,该系数从10小时的SINHALA语音语料库中提取,并且使用语音查询的识别精度来评估系统的性能。此外,本文中提出的解决方案介绍了Sinhala语言的域特异性意图分类的首要。

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