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首页> 外文期刊>IEEE Journal of Oceanic Engineering >A neural network approach to classification of sidescan sonar imagery from a midocean ridge area
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A neural network approach to classification of sidescan sonar imagery from a midocean ridge area

机译:神经网络方法对洋中脊地区的侧扫声纳图像进行分类

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摘要

A neural-network approach to classification of sidescan-sonar imagery is tested on data from three distinct geoacoustic provinces of a midocean-ridge spreading center: axial valley, ridge flank, and sediment pond. The extraction of representative features from the sidescan imagery is analyzed, and the performance of several commonly used texture measures are compared in terms of classification accuracy using a backpropagation neural network. A suite of experiments compares the effectiveness of different feature vectors, the selection of training patterns, the configuration of the neural network, and two widely used statistical methods: Fisher-pairwise classifier and nearest-mean algorithm with Mahalanobis distance measure. The feature vectors compared here comprise spectral estimates, gray-level run length, spatial gray-level dependence matrix, and gray-level differences. The overall accurate classification rates using the best feature set for the three seafloor types are: sediment ponds, 85.9%; ridge flanks, 91.2%; and valleys, 80.1%. While most current approaches are statistical, the significant finding in this study is that high performance for seafloor classification in terms of accuracy and computation can be achieved using a neural network with the proper combination of texture features. These are preliminary results of our program toward the automated segmentation and classification of undersea terrain.
机译:使用神经网络对侧扫声纳图像进行分类的方法,是根据来自中洋洋脊扩散中心的三个不同的地理声学省(轴向谷,脊侧面和沉积池)的数据进行测试的。分析了从侧面扫描图像中提取出的代表性特征,并使用反向传播神经网络在分类精度方面比较了几种常用纹理度量的性能。一组实验比较了不同特征向量的有效性,训练模式的选择,神经网络的配置以及两种广泛使用的统计方法:Fisher-成对分类器和带有Mahalanobis距离度量的最近均值算法。这里比较的特征向量包括光谱估计,灰度​​游程长度,空间灰度依赖矩阵和灰度差。使用三种海底类型的最佳特征集得出的总体准确分类率为:沉积物池,85.9%;脊侧面,91.2%;和山谷,占80.1%。尽管目前大多数方法都是统计性的,但这项研究的重要发现是,可以使用具有纹理特征适当组合的神经网络,在精度和计算方面实现海底分类的高性能。这些是我们对海底地形进行自动分割和分类的计划的初步结果。

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