基于MFCC和双微阵列的缩减残差网络命令词识别算法

Shuo Zhang, Qingning Zeng
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引用次数: 0

摘要

为了提高复杂环境下命令词识别的准确性和鲁棒性,本文研究了一种结合双微阵列和mel -倒谱系数的基于萎缩残差网络的命令词识别算法。采用双微阵列数据集和收缩残差单元对ResNet15网络进行了改进。构造了命令词识别和用户判断两个多任务收缩残差模型RSN-CW。其中,RSN-CW15整体命令词识别率和用户判断准确率均超过ResNet15模型。与ResNet15相比,低功耗RSN-CW6在保证准确率的同时,大大减少了训练参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Command Words Recognition Algorithm of Shrinking Residual Network based on MFCC and Dual Micro-Array
In order to improve the accuracy and robustness of command word recognition in complex environments, this paper studies a command word recognition algorithm based on Shrinking residual network combining dual microarray and Mel-cepstrum coefficients. The ResNet15 network is improved by using dual micro-array datasets and contraction residual units. two multi-task contraction residual models RSN-CW with command word recognition and user judgment systems are constructed. Among them, the RSN-CW15 overall command word recognition rate and The accuracy of user judgment both exceeding the ResNet15 model. Compared with ResNet15, the training parameters of low-power RSN-CW6 are greatly reduced while ensuring accuracy.
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