首页> 外文期刊>Continental Shelf Research: A Companion Journal to Deep-Sea Research and Progress in Oceanography >Comparison of automated classification techniques for predicting benthic biological communities using hydroacoustics and video observations
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Comparison of automated classification techniques for predicting benthic biological communities using hydroacoustics and video observations

机译:使用水声和视频观测来预测底栖生物群落的自动分类技术的比较

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The effective management of our marine ecosystems requires the capability to identify, characterise and predict the distribution of benthic biological communities within the overall seascape architecture. The rapid expansion of seabed mapping studies has seen an increase in the application of automated classification techniques to efficiently map benthic habitats, and the need of techniques to assess confidence of model outputs. We use towed video observations and 11 seafloor complexity variables derived from multibeam echosounder (MBES) bathymetry and backscatter to predict the distribution of 8 dominant benthic biological communities in a 54km2 site, off the central coast of Victoria, Australia. The same training and evaluation datasets were used to compare the accuracies of a Maximum Likelihood Classifier (MLC) and two new generation decision tree methods, QUEST (Quick Unbiased Efficient Statistical Tree) and CRUISE (Classification Rule with Unbiased Interaction Selection and Estimation), for predicting dominant biological communities. The QUEST classifier produced significantly better results than CRUISE and MLC model runs, with an overall accuracy of 80% (Kappa 0.75). We found that the level of accuracy with the size of training set varies for different algorithms. The QUEST results generally increased in a linear fashion, CRUISE performed well with smaller training data sets, and MLC performed least favourably overall, generating anomalous results with changes to training size. We also demonstrate how predicted habitat maps can provide insights into habitat spatial complexity on the continental shelf. Significant variation between patch-size and habitat types and significant correlations between patch size and depth were also observed.
机译:对我们的海洋生态系统进行有效管理需要具有识别,表征和预测底栖生物群落在整个海景建筑中的分布的能力。随着海床制图研究的迅速发展,使用自动分类技术来有效绘制底栖生境图的应用有所增加,并且需要使用技术来评估模型输出的可信度。我们使用拖曳的视频观测结果和来自多波束回声测深(MBES)测深法和反向散射的11个海底复杂度变量,来预测澳大利亚维多利亚州中部海岸外54平方公里站点中8个主要底栖生物群落的分布。使用相同的训练和评估数据集来比较最大似然分类器(MLC)和两种新一代决策树方法QUEST(快速无偏有效统计树)和CRUISE(具有无偏交互选择和估计的分类规则)的准确性。预测主要的生物群落。 QUEST分类器产生的结果比CRUISE和MLC模型运行好得多,总体准确性为80%(Kappa 0.75)。我们发现,针对不同算法的准确性水平与训练集的大小有所不同。 QUEST结果通常以线性方式增加,CRUISE在较小的训练数据集上表现良好,而MLC总体上表现不佳,随训练大小的变化而产生异常结果。我们还演示了预测的栖息地地图如何提供​​有关大陆架栖息地空间复杂性的见解。还观察到斑块大小和栖息地类型之间的显着变化以及斑块大小和深度之间的显着相关性。

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