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Angular Response Classification of Multibeam Sonar Based on Multi-angle Interval Division

机译:基于多角度间隔划分的多沟声纳的角度响应分类

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In seabed classification techniques based on multibeam sonar, the classification method using angular response information of backscatter strength data has shown the potential for practical application and can be supported by the seabed high-frequency acoustic scattering theory. However, classification imagery produced by this method has a relatively low spatial resolution, which is limited to the swath width of multibeam sonar. To solve this problem, the angular response curve (ARC) of backscatter strength has been divided into several intervals, and the fragment of the ARC within each angle interval has been processed separately to extract the features within the sample data. Features extracted in this way include the average value of the fragment of the ARC, the first order derivative, the second order derivative, etc.; and a set of feature vectors has been formed in each interval. Finally, the feature vector samples in each interval are independently trained and predicted by a support vector machine classifier. For this method, the spatial resolution of the classification imagery is the size of the angle interval coverage, limited to the number of divided intervals. Therefore, the area of the region represented by each feature sample has been reduced, which can improve the spatial resolution of classification imagery. Meanwhile, the results of processing the experimental data show that this method also has relatively good classification performance.
机译:在基于MultiBeam Sonar的海底分类技术中,使用反向散射强度数据的角度响应信息的分类方法显示了实际应用的可能性,并且可以由海底高频声学散射理论支持。然而,通过该方法产生的分类图像具有相对低的空间分辨率,其限于MultiBeam Sonar的条形宽度。为了解决这个问题,反向散射强度的角响应曲线(弧)已被分成多个间隔,并且在每个角度间隔内的弧的片段分别处理以提取样本数据内的特征。以这种方式提取的特征包括弧形的片段的平均值,第一阶衍生物,二阶导数等;并且在每个间隔中形成了一组特征向量。最后,每个间隔中的特征向量样本由支持向量机分类器进行独立培训和预测。对于该方法,分类图像的空间分辨率是角间隔覆盖的大小,限于划分间隔的数量。因此,已经减少了由每个特征样本所表示的区域的区域,这可以改善分类图像的空间分辨率。同时,处理实验数据的结果表明,该方法还具有相对良好的分类性能。

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