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Robust broad-scale benthic habitat mapping when training data is scarce

机译:缺乏培训数据时,可进行强大的大规模底栖生境制图

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Understanding the distribution of habitat classes at broad-scales is of interest in marine park conservation and planning. Typically sites of interest can extend up to many hundreds of square kilometers. However, collecting ground truth data (optical imagery, towed video, grab samples, and etc.) over such broad scales is impractical, and only a small fraction of the sites can be sampled depending on budget constraints. Benthic habitat mapping involves learning the correlations between habitat classes derived from limited ground truth sampling of the seabed and its corresponding morphology and extrapolating these correlations to the entire site. One important issue with such approaches is that the correlations are learned on limited data, therefore, motivating the need to investigate robust techniques for learning the correlations and extrapolating them. In this paper we have motivated the use of the generative classifier Gaussian Mixture Models (GMM's) for the task of benthic habitat mapping instead of discriminative models such as Classification Trees (CT's — popular in the benthic habitat mapping literature) and Support Vector Machines (SVM's — generally popular in a variety of fields) based on the idea that generative classifiers take into more information about the underlying data distribution than discriminative classifiers, yielding more robust extrapolations. Using holdout validation we have shown that GMM's consistently perform comparably, or outperform, the best classifier for all training set sizes (small and large), and that this is not the case with CT's and SVM's. We also show that GMM's are more certain about their predictions over the broad-scale than the other classifiers.
机译:在海洋公园的保护和规划中,广泛地了解栖息地类别的分布非常重要。通常,名胜古迹可以延伸到数百平方公里。但是,在如此广泛的范围内收集地面真相数据(光学图像,拖曳视频,抓取样本等)是不切实际的,并且根据预算限制,只能对一小部分站点进行采样。底栖生境制图涉及从有限的海床地面实况采样及其对应的形态学中得出的生境类别之间的相关性,并将这些相关性外推到整个站点。这种方法的一个重要问题是,相关性是在有限的数据上学习的,因此激发了研究可靠的技术以学习相关性并对其进行推断的需求。在本文中,我们鼓励使用生成器分类器高斯混合模型(GMM)来进行底栖生物栖息地制图的任务,而不是使用诸如分类树(CT's-在底栖生物栖息地制图文献中很流行)和支持向量机(SVM -通常在各个领域中都比较流行),其基础是生成分类器比分类分类器能吸收更多有关基础数据分布的信息,从而得出更可靠的推断。使用保持验证,我们证明了GMM对于所有训练集大小(小和大)的最佳分类器的性能始终保持可比或优于,而CT和SVM并非如此。我们还表明,与其他分类器相比,GMM在更大范围内对他们的预测更为确定。

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