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A Comparison of Supervised Classification Methods for the Prediction of Substrate Type Using Multibeam Acoustic and Legacy Grain-Size Data

机译:使用多光束声和遗留粒度数据预测基材类型的监督分类方法的比较

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摘要

Detailed seabed substrate maps are increasingly in demand for effective planning and management of marine ecosystems and resources. It has become common to use remotely sensed multibeam echosounder data in the form of bathymetry and acoustic backscatter in conjunction with ground-truth sampling data to inform the mapping of seabed substrates. Whilst, until recently, such data sets have typically been classified by expert interpretation, it is now obvious that more objective, faster and repeatable methods of seabed classification are required. This study compares the performances of a range of supervised classification techniques for predicting substrate type from multibeam echosounder data. The study area is located in the North Sea, off the north-east coast of England. A total of 258 ground-truth samples were classified into four substrate classes. Multibeam bathymetry and backscatter data, and a range of secondary features derived from these datasets were used in this study. Six supervised classification techniques were tested: Classification Trees, Support Vector Machines, k-Nearest Neighbour, Neural Networks, Random Forest and Naive Bayes. Each classifier was trained multiple times using different input features, including i) the two primary features of bathymetry and backscatter, ii) a subset of the features chosen by a feature selection process and iii) all of the input features. The predictive performances of the models were validated using a separate test set of ground-truth samples. The statistical significance of model performances relative to a simple baseline model (Nearest Neighbour predictions on bathymetry and backscatter) were tested to assess the benefits of using more sophisticated approaches. The best performing models were tree based methods and Naive Bayes which achieved accuracies of around 0.8 and kappa coefficients of up to 0.5 on the test set. The models that used all input features didn't generally perform well, highlighting the need for some means of feature selection.
机译:为了有效地规划和管理海洋生态系统和资源,越来越需要详细的海底基质地图。使用测深法和声后向散射形式的遥感多波束回波测深数据结合地面实况采样数据来告知海床底物的绘制已变得普遍。尽管直到最近,这种数据集通常都是通过专家解释来分类的,但是现在很明显,需要更客观,更快和可重复的海底分类方法。这项研究比较了多种监督分类技术从多光束回声数据预测底物类型的性能。研究区域位于北海,英格兰的东北海岸。总共258个地面真相样品被分为四个基质类别。在这项研究中使用了多光束测深和反向散射数据,以及从这些数据集获得的一系列次要特征。测试了六种监督分类技术:分类树,支持向量机,k最近邻,神经网络,随机森林和朴素贝叶斯。每个分类器使用不同的输入特征进行了多次训练,包括i)测深和反向散射的两个主要特征,ii)通过特征选择过程选择的特征的子集,以及iii)所有输入特征。模型的预测性能已使用单独的真实样本测试集进行了验证。测试了模型性能相对于简单基准模型(对测深和反向散射的最近邻预测)的统计意义,以评估使用更复杂方法的益处。表现最佳的模型是基于树的方法和朴素贝叶斯(Naive Bayes),它们在测试集上实现了约0.8的精度和高达0.5的kappa系数。使用所有输入功能的模型通常效果不佳,突出了对某些功能选择手段的需求。

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  • 作者

    David Stephens; Markus Diesing;

  • 作者单位
  • 年(卷),期 -1(9),4
  • 年度 -1
  • 页码 e93950
  • 总页数 14
  • 原文格式 PDF
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