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Memory-efficient buffering method and enhanced reference template for embedded automatic speech recognition system

机译:嵌入式自动语音识别系统的内存有效缓冲方法和增强参考模板

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摘要

This work realises a memory-efficient embedded automatic speech recognition (ASR) system on a resource-constrained platform. A buffering method called ultra-low queue-accumulator buffering is presented to efficiently use the constrained memory to extract the linear prediction cepstral coefficient (LPCC) feature in the embedded ASR system. The optimal order of the LPCC is evaluated to balance the recognition accuracy and the computational cost. In the decoding part, the proposed enhanced cross-words reference templates (CWRTs) method is incorporated into the template matching method to reach the speaker-independent characteristic of ASR tasks without the large memory burden of the conventional CWRTs method. The proposed techniques are implemented on a 16-bit microprocessor GPCE063A platform with a 49.152 MHz clock, using a sampling rate of 8 kHz. Experimental results demonstrate that recognition accuracy reaches 95.22% in a 30-sentence speaker-independent embedded ASR task, using only 0.75 kB RAM.
机译:这项工作在资源受限的平台上实现了一种内存有效的嵌入式自动语音识别(ASR)系统。提出了一种称为超低队列累加器缓冲的缓冲方法,以有效地使用约束内存来提取嵌入式ASR系统中的线性预测倒谱系数(LPCC)特征。评估LPCC的最佳顺序以平衡识别精度和计算成本。在解码部分,将所提出的增强型填字游戏参考模板(CWRTs)方法结合到模板匹配方法中,从而实现了ASR任务的说话者无关特性,而没有传统CWRTs方法的大量存储负担。所提出的技术在具有49.152 MHz时钟的16位微处理器GPCE063A平台上实现,采样率为8 kHz。实验结果表明,仅使用0.75 kB RAM,在30句独立于说话者的嵌入式ASR任务中,识别精度达到95.22%。

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