影响现代交互系统语音识别率的生态条件因素数据分析

A. C. Kaladevi, R. Saravanakumar, K. Veena, V. Muthukumaran, N. Thillaiarasu, S. S. Kumar
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引用次数: 1

摘要

基于语音的交互系统对不断增长的当代交互技术(人机交互系统)做出了贡献,这些技术在过去几年中迅速出现。通用性、多通道同步、灵敏度和时序都是语音识别的显著特点。此外,有几个变量影响语音交互识别的精度。然而,对于影响语音识别率的环境噪声、人为噪声、语速和频率这5个生态条件变量的研究却很少。本研究的主要战略目标是分析前面提到的四个变量对SRR的影响,它包括在混合噪声语音数据上的多个实验阶段。利用基于稀疏表示的分析技术对效果进行分析。语音识别不会受到一个人平常说话速度的明显影响。因此,在嘈杂环境中,高频语音信号比低频语音信号更容易被识别(~ ~ 98.12%)。通过实验,测试结果可为分布式控制指挥系统的设计提供参考。
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Data Analytics on Eco-Conditional Factors Affecting Speech Recognition Rate of Modern Interaction Systems
Speech-based Interaction systems contribute to the growing class of contemporary interactive techniques (Human-Computer Interactive system), which have emerged quickly in the last few years. Versatility, multi-channel synchronization, sensitivity, and timing are all notable characteristics of speech recognition. In addition, several variables influence the precision of voice interaction recognition. However, few researchers have done a significant study on the five eco-condition variables that tend to affect speech recognition rate (SRR): ambient noise, human noise, utterance speed, and frequency. The principal strategic goal of this research is to analyze the influence of the four variables mentioned earlier on SRR, and it includes many stages of experimentation on mixed noise speech data. The sparse representation-based analyzing technique is utilized to analyze the effects. Speech recognition is not noticeably affected by a person’s usual speaking pace. As a result, high-frequency voice signals are more easily recognized (∼∼98.12%) than low-frequency speech signals in noisy environments. By performing the experiments, the test results may help design the distributive controlling and commanding systems.
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