首页> 外文会议>Intelligent Robots and Systems, 2005. (IROS 2005). 2005 IEEE/RSJ International Conference on >Auditory robotic tracking of sound sources using hybrid cross-correlation and recurrent networks
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Auditory robotic tracking of sound sources using hybrid cross-correlation and recurrent networks

机译:使用混合互相关和递归网络对声音源进行听觉机器人跟踪

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This paper describes an auditory robotic system capable of computing the angle of incidence of a sound source on the horizontal plane (azimuth). The system, with the use of an Elman type recurrent neural network (RNN), is able to dynamically track this sound source as it changes azimuthally within the environment. The RNN is used to enable fast tracking responses to the overall system over a set time, as opposed to waiting for the next sound position before moving. The system is first tested in a simulated environment and then these results are compared with testing on the robotic system. The results show that the development of a hybrid system incorporating cross-correlation and recurrent neural networks is an effective mechanism for the control of a robot that tracks sound sources azimuthally.
机译:本文介绍了一种听觉机器人系统,该系统能够计算声源在水平面(方位角)上的入射角。该系统使用Elman型递归神经网络(RNN),能够随着环境中方位角的变化而动态跟踪该声源。 RNN用于在设定的时间内对整个系统进行快速跟踪响应,而不是在移动之前等待下一个声音位置。该系统首先在模拟环境中进行测试,然后将这些结果与在机器人系统上进行的测试进行比较。结果表明,结合了互相关和递归神经网络的混合系统的开发是控制机器人方位角跟踪声源的有效机制。

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