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Comparison of different multiclass SVM methods for speaker independent phoneme recognition

机译:说话人独立音素识别的不同多类SVM方法的比较

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Four multiclass Support Vector Machines (SVMs) methods were designed for the task of speaker independent phoneme recognition. These are the All-at-once, One-against-all, One-against-one, and the Directed Acyclic Graph SVM (DAGSVM). The Discrete Wavelet Transform (DWT) 8 frequency band power percentages are used for feature extraction. All tests were carried out on the TIMIT database. Comparable recognition rates were obtained from all designed systems. However, the One-against-One method performed best, achieving an accuracy of 53.70% for multi-speaker unlimited vocabulary speech. The phoneme recognition system, adopting the DWT and the One-against-one method, are intended to be implemented on a dedicated chip. The dedicated chip will improve the speed performance by approximately 100 times when comparing the hardware setup with the software implementation. This is obtained by providing the hardware parallelism, which accommodates the algorithms that have been used.
机译:设计了四种多类支持向量机(SVM)方法,用于独立于说话人的音素识别任务。它们是一次,一次,全部,一对一和有向非循环图SVM(DAGSVM)。离散小波变换(DWT)8频段功率百分比用于特征提取。所有测试均在TIMIT数据库上进行。从所有设计的系统中都获得了可比的识别率。但是,“一对多”方法效果最好,多说话者无限制词汇语音的准确度达到53.70%。采用DWT和“一对一”方法的音素识别系统旨在在专用芯片上实现。将硬件设置与软件实现进行比较时,专用芯片将使速度性能提高约100倍。这是通过提供硬件并行度来实现的,该并行度可容纳已使用的算法。

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