Comparative analysis of Kannada phoneme recognition using different classifiers

A. S., R. Kumaraswamy
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引用次数: 3

Abstract

Information retrieval from audio and speech is very important in the present digital world. Phonetic search (phoneme level search) is an efficient technique for searching words or phrases from audio and speech recordings. In this paper, a baseline phoneme recognition system for Kannada language is developed using Deep Belief Networks (DBNs). Phonemes are segmented from broadcast/read mode Kannada speech. 16 MFCC features are extracted from each speech frame. These features are used as input to the recognizer. DBNs are relatively new area of machine learning. The learning procedure of DBN has two steps, an unsupervised pre-training stage and fine-tuning stage. The performance of DBN for recognition of 25 Kannada phonemes is compared with the conventional methods of speech recognition such as, Multi-Layer Feed Forward Neural Networks (ML-FFNNs) and Support Vector Machines (SVMs). Experimental results show that DBNs yield a high performance as compared to other techniques with Phoneme Error Rate (PER) of 23.6 %. In another experiment conducted, shows that DBN's performance is influenced by number of hidden units in the hidden layer chosen.
不同分类器对卡纳达语音位识别的比较分析
在当今的数字世界中,从音频和语音中检索信息是非常重要的。语音搜索(音素级搜索)是一种从音频和语音记录中搜索单词或短语的有效技术。本文提出了一种基于深度信念网络(dbn)的卡纳达语基线音素识别系统。从广播/阅读模式的卡纳达语语音中分割音素。从每个语音帧中提取16个MFCC特征。这些特征用作识别器的输入。dbn是相对较新的机器学习领域。DBN的学习过程分为无监督预训练阶段和微调阶段。将DBN识别25个卡纳达语音素的性能与传统的语音识别方法如多层前馈神经网络(ML-FFNNs)和支持向量机(svm)进行了比较。实验结果表明,与其他技术相比,DBNs具有较高的性能,音素错误率(PER)为23.6%。在另一项实验中,发现DBN的性能受到所选择的隐藏层中隐藏单元数量的影响。
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