中文语音识别系统的测试方案设计

Yanfei Liu
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引用次数: 0

摘要

本文分析了当前语音识别系统的特点和分类,现有的测试方案和存在的问题。在此基础上,给出了语音检测语音识别系统的测试方案。通过建立语音样本库存储测试样本,实现了命令词的存储、组合的选择和测试条件的再现,提高了测试样本的利用率和效率。结合语音识别系统的实际应用环境,测试系统进行了测试环境分类测试方案,进行了纯环境命令字测试和干扰环境容错测试,分别表征了语音识别系统对自身的识别能力和对环境的适应能力,并直接输出测试结果。通过实验验证,该方案可以提高语音识别能力测试测试结果的准确性,提高相关声音检测系统的横向可比性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Test Scheme Design of Chinese Speech Recognition System
This paper analyzes the characteristics and classification of the current speech recognition system, the existing test scheme and the existing problems. On this basis, a test scheme is provided for voice detection speech recognition system. By establishing a voice sample library to store test samples, the storage of command words, the selection of combinations and the reproduction of test conditions are realized, and the utilization rate and efficiency of test samples are improved. Combined with the actual application environment of the speech recognition system, the test system has carried out the test environment classification test scheme, carried out the pure environment command word test and the interference environment fault tolerance test, respectively characterized the speech recognition system's ability to recognize itself and adapt to the environment, and directly output the test results. Through experimental verification, this scheme can improve the accuracy of the test results of the speech recognition ability test, and improve the horizontal comparability of the related sound detection systems.
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