Robot Audition from the Viewpoint of Computational Auditory Scene Analysis

H. Okuno, T. Ogata, Kazunori Komatani
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引用次数: 3

Abstract

We have been engaged in research on computational auditory scene analysis to attain sophisticated robot/computer human interaction by manipulating real-world sound signals. The objective of our research is the understanding of an arbitrary sound mixture including music and environmental sounds as well as voiced speech, obtained by robot's ears (microphones) embedded on the robot. Three main issues in computational auditory scene analysis are sound source localization, separation, and recognition of separated sounds for a mixture of speech signals as well as polyphonic music signals. The Missing Feature Theory (MFT) approach integrates sound source separation and automatic speech recognition by generating missing feature masks. This robot audition system has been successfully ported to three kinds of robots, SIG2, Robovie R2 and Honda ASIMO. A robot recognizes three simultaneous speeches such as placing a meal order or a referee for Rock- Paper-Scissors Sound Games with a delay of less than 2 seconds. The real-time beat tracking system is also developed for robot audition. A robot hears music, understands and predicts its musical beats to behave in accordance with the beat times in real-time.
从计算听觉场景分析的角度看机器人听觉
我们一直致力于计算听觉场景分析的研究,通过操纵现实世界的声音信号来实现复杂的机器人/计算机人机交互。我们的研究目标是理解任意的声音混合,包括音乐和环境声音以及语音,这些声音是通过嵌入机器人的耳朵(麦克风)获得的。计算听觉场景分析中的三个主要问题是声源定位、分离以及对混合语音信号和复调音乐信号的分离声音的识别。缺失特征理论(MFT)方法通过生成缺失特征掩码,将声源分离与语音自动识别相结合。该机器人试听系统已成功移植到SIG2、Robovie R2和本田ASIMO三种机器人上。机器人可以同时识别3个语音,比如点餐、剪子石头布声音游戏的裁判,延迟时间不超过2秒。同时,还开发了用于机器人试音的实时节拍跟踪系统。机器人听到音乐,理解并预测其音乐节拍,并根据节拍时间实时行动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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