基于神经仿生声分离的声纳场景分析

S. Speidel
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引用次数: 2

摘要

目前正在开发一种计算体系结构,可以自动化原始的和基于方案的声音流,从而实现对复杂声纳场景的更好的实时、原位分析。这种计算模型被称为神经波束形成(nbf)。对三种波束形成器作了简要的定性概述:横杆波束形成器基于Hopfield横杆电路;多矢量波束形成器涉及Kohonen特征映射学习;神经仿生波束形成器实际上是一个波束形成器的网络,它结合了其他两种波束形成器的元素。在实验室室内使用麦克风阵列的实验中,NBF能够定位声源,同时表现出对通过反射路径到达阵列的声音的容忍度,一旦处理看到了来自源的直接路径激励的开始
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Sonar scene analysis using neurobionic sound segregation
A computing architecture is being produced that automates primitive and schemea-based streaming of sounds and thereby achieves better real-time, in-situ analyses of complicated sonar scenes. The computational models are called the neural beamformers (NBFs). A brief qualitative overview of three beamformers is given: the crossbar beamformer is based on the Hopfield crossbar circuit; the multivector beamformer is related to Kohonen feature map learning; and the neurobionic beamformer is really a network of beamformers and combines elements of the other two beamformers. In experiments using an array of microphones operated in a laboratory room, an NBF was able to locate a sound source while exhibiting tolerance to sounds arriving at the array via a reflected path once the processing had seen the onset of the direct path excitation from the source.<>
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