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Active biosonar systems based on multiscale signal representations and hierarchical neural networks

机译:基于多尺度信号表示和层次神经网络的主动生物声纳系统

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Abstract: Signal features based on multiresolution short-time Fourier transforms (STFT) and the Morlet wavelet transform (MWT) have been developed to classify echo returns from targets ensonified by simulated dolphin echolocation clicks. Spectrogram features are obtained at different scales of resolution using analysis windows of different sizes. A method of compressing the highly redundant time-scale representations provided by the MWT has been developed based on multiscale edge analysis (MSEA) of wavelet local maxima. Neural networks are used to evaluate the efficacy of the various feature sets for target recognition. Hierarchical neural networks are used to combine different feature sets for improved classification performance. !5
机译:摘要:已经开发了基于多分辨率短时傅立叶变换(STFT)和Morlet小波变换(MWT)的信号特征,以对通过模拟的海豚回声定位咔嗒声所激发的目标的回声进行分类。使用不同大小的分析窗口,可以以不同的分辨率等级获得频谱图特征。基于小波局部最大值的多尺度边缘分析(MSEA),已经开发了一种压缩由MWT提供的高度冗余的时标表示的方法。神经网络用于评估各种特征集对目标识别的功效。层次神经网络用于组合不同的特征集,以提高分类性能。 !5

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