计算机科学
声学
话筒
圈地
源分离
积极倾听
分离(统计)
压缩传感
超材料
麦克风阵列
消噪麦克风
音频信号
语音识别
计算机视觉
人工智能
扬声器
物理
电信
光学
语音编码
沟通
机器学习
社会学
作者
Xuecong Sun,Han Jia,Zhe Zhang,Yuzhen Yang,Zhaoyong Sun,Jun Yang
标识
DOI:10.1002/advs.201902271
摘要
Abstract Conventional approaches to sound localization and separation are based on microphone arrays in artificial systems. Inspired by the selective perception of the human auditory system, a multisource listening system which can separate simultaneous overlapping sounds and localize the sound sources in 3D space, using only a single microphone with a metamaterial enclosure is designed. The enclosure modifies the frequency response of the microphone in a direction‐dependent manner by giving each direction a characteristic signature. Thus, the information about the location and the audio content of sound sources can be experimentally reconstructed from the modulated mixed signals using a compressive sensing algorithm. Due to the low computational complexity of the proposed reconstruction algorithm, the designed system can also be applied in source identification and tracking. The effectiveness of the system in multiple real‐life scenarios is evaluated through multiple random listening tests. The proposed metamaterial‐based single‐sensor listening system opens a new way of sound localization and separation, which can be applied to intelligent scene monitoring and robot audition.
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