Towards an Environmentally Robust Speech Assistant System for Emergency Medical Services.

Zhenchuan Zhang,Yu Tian,Tianshu Zhou, Yinghao Zhao,Jungen Zhang,Jingsong Li

Studies in health technology and informatics(2024)

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摘要
Automated speech recognition technology with robust performance in various environments is highly needed by emergency clinicians, but there are few successful cases. One main challenge is the wide variety of environmental interference involved during a typical prehospital care emergency service such as background noises and overlapping speech. To solve this problem, we try to establish an environmentally robust speech assistant system with the help of the proposed personalized speech enhancement (PSE) method, which utilizes the target physician's voiceprint feature to suppress non-target signal components. We demonstrate its potential value using both general public test set and our real EMS test set by evaluating the objective speech quality metrics, DNSMOS, and the recognition accuracy. Hopefully, the proposed method will raise EMS efficiency and security against non-target speech.
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