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A Novel Ensemble of Distance Measures for Feature Evaluation: Application to Sonar Imagery

机译:一种用于特征评估的新型测距组合:在声纳图像中的应用

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摘要

Mapping interesting regions in qualitative sidescan sonar imagery predominantly relies on an expensive human interpretation process. It would therefore be useful to automate components of this task with a feature-based, Machine Learning system. We must first establish a framework for reliably and efficiently evaluating the features. A novel ensemble of probabilistic distance measures is proposed, as an objective function for this purpose. The idea is motivated by the fact that different distance measures yield conflicting feature ranking results. In the ensemble, distances can be combined to produce a consensus rank score. As a test case, we find a sub-optimal parameterisation of a Cooccurrence Matrix, for identifying textures peculiar to the tube-building worm, Sabellaria spinulosa. A strong correlation is found between ensemble scores and classification accuracies. The proposed methodology is applicable to any sonar imagery, classification task or feature groups.
机译:在定性侧扫描声纳图像中绘制有趣的区域主要依赖于昂贵的人类解释过程。因此,使用基于功能的机器学习系统来自动化此任务的组件将非常有用。我们必须首先建立一个框架,以可靠,有效地评估这些功能。提出了一种新的概率距离度量集合,作为为此目的的目标函数。该想法是受以下事实启发的:不同的距离度量会产生相互矛盾的特征排名结果。在合奏中,可以将距离合并以产生共识等级分数。作为测试用例,我们发现了一个共现矩阵的次优参数化,用于识别制管蠕虫Sabellaria spinulosa特有的纹理。在整体得分和分类准确性之间发现了很强的相关性。所提出的方法适用于任何声纳图像,分类任务或特征组。

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