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首页> 外文期刊>Marine Geophysical Research >Preference of echo features for classification of seafloor sediments using neural networks
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Preference of echo features for classification of seafloor sediments using neural networks

机译:使用神经网络对回波特征进行海底沉积物分类的偏好

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摘要

Selection of a set of dominant echo features to classify seafloor sediments using a multilayer perceptron neural network is investigated at two acoustic frequencies (33 and 210 kHz). Several sets of inputs with different combinations of two, three, four, five, and six echo features are exploited with three-layer neural networks. The performances of the networks are analyzed to assess the most discriminating set of echo features for classification of seafloor sediments. The results of the overall average performances reveal that backscatter strength and time spread are the two most important echo features at 33 kHz, whereas backscatter strength has higher discriminating characteristics at 210 kHz for seafloor sediment classification. In addition, a set of four echo features consisting of backscatter strength, time-spread, statistical skewness, and Hausdroff dimension gives the highest success at both the acoustic frequencies.
机译:在两个声频(33和210 kHz)下,研究了使用多层感知器神经网络选择一组主要回波特征对海底沉积物进行分类的方法。三层神经网络可利用几组具有两个,三个,四个,五个和六个回声特征的不同组合的输入。分析网络的性能,以评估最能区分回波特征的海底沉积物分类。总体平均性能的结果表明,反向散射强度和时间扩展是33 kHz时两个最重要的回波特征,而对于海底沉积物分类,反向散射强度在210 kHz时具有较高的辨别特性。此外,由回波强度,时间扩展,统计偏斜度和Hausdroff尺寸组成的四个回波特征集在两个声学频率上均具有最高的成功率。

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