Research on the interactive design of electric vehicle interior based on voice sensing and visual imagery

Tao Ba,Shan Li, Ying Gao, Daoqiang Tan

International Journal of Vehicle Information and Communication Systems(2023)

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摘要
With the complete function of modern automobiles, in-vehicle intelligent devices are becoming more and more complex and the requirements for human-computer interaction are also increasing. The research proposes a speech recognition method that combines multi-window estimation spectral subtraction and dynamic time warping to enhance the denoising ability and speech recognition ability of in-vehicle devices. It also proposes actions based on a Gaussian hybrid segmentation algorithm and a visual image functional space segmentation algorithm. The automatic identification method and the validity of the algorithm are verified. The results show that under different input signal-to-noise ratios, the denoising capability of the method is improved by 2.45% to 31.47% over the baseline method. And the accuracy of speech recognition in the vehicle environment is 92.3% to 98.7%. It is hoped that this research can make some contributions to the upgrading of voice and visual interaction within electric vehicles.
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关键词
electric vehicle interior,voice sensing,interactive design
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