机器人试听和计算听觉场景分析

K. Nakadai, Hiroshi G. Okuno
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引用次数: 7

摘要

机器人试听旨在开发能够在现实世界中工作的机器人耳朵,即机器聆听多个声源。它的关键问题是噪音。随着智能手机和人工智能(AI)扬声器的普及,语音界面变得越来越熟悉,越来越不可或缺。他们的主要问题是噪音和多名同时说话者。最近,两项技术进步显著提高了语音接口和机器人试听的性能。新兴的深度学习技术提高了自动语音识别的噪声鲁棒性,而麦克风阵列处理则提高了降噪等预处理性能。本文概述了机器人试听的历史,并介绍了机器人试听的开源软件及其在现实世界中的广泛应用。此外,还讨论了机器人听觉如何促进计算听觉场景分析的发展,即对现实世界听觉环境的理解。
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Robot Audition and Computational Auditory Scene Analysis
Robot audition aims at developing robot's ears that work in the real world, that is, machine listening of multiple sound sources. Its critical problem is noise. Speech interfaces have become more familiar and more indispensable as smartphones and artificial intelligence (AI) speakers spread. Their critical problems are noise and multiple simultaneous speakers. Recently two technological advances have contributed to significantly improve the performance of speech interfaces and robot audition. Emerging deep learning technology has improved noise robustness of automatic speech recognition, whereas microphone array processing has improved the performance of preprocessing such as noise reduction. Herein, an overview and history of robot audition are provided together with introduction of an open‐source software for robot audition and its wide applications in the real world. Also, it is discussed how robot audition contributes to the development of computational auditory scene analysis, that is, understanding of real‐world auditory environments.
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