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Hyperspectral tree crown classification using the multiple instance adaptive cosine estimator

机译:使用多实例自适应余弦估计器的高光谱树冠分类

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摘要

Tree species classification using hyperspectral imagery is a challenging task due to the high spectral similarity between species and large intra-species variability. This paper proposes a solution using the Multiple Instance Adaptive Cosine Estimator (MI-ACE) algorithm. MI-ACE estimates a discriminative target signature to differentiate between a pair of tree species while accounting for label uncertainty. Multi-class species classification is achieved by training a set of one-vs-one MI-ACE classifiers corresponding to the classification between each pair of tree species and a majority voting on the classification results from all classifiers. Additionally, the performance of MI-ACE does not rely on parameter settings that require tuning resulting in a method that is easy to use in application. Results presented are using training and testing data provided by a data analysis competition aimed at encouraging the development of methods for extracting ecological information through remote sensing obtained through participation in the competition. The experimental results using one-vs-one MI-ACE technique composed of a hierarchical classification, where a tree crown is first classified to one of the genus classes and one of the species classes. The species-level rank-1 classification accuracy is 86.4% and cross entropy is 0.9395 on the testing data, provided by the competition organizer, without the release of ground truth for testing data. Similarly, the same evaluation metrics are computed on the training data, where the rank-1 classification accuracy is 95.62% and the cross entropy is 0.2649. The results show that the presented approach can not only classify the majority species classes, but also classify the rare species classes.
机译:由于物种之间的光谱相似性高以及物种内部的巨大变异性,使用高光谱图像对树木进行分类是一项艰巨的任务。本文提出了一种使用多实例自适应余弦估计器(MI-ACE)算法的解决方案。 MI-ACE估计了可区分的目标特征,以区分一对树木,同时考虑了标签的不确定性。通过训练一组一对多的MI-ACE分类器来实现多类物种分类,该MI-ACE分类器对应于每对树种之间的分类,并且对所有分类器的分类结果进行投票。此外,MI-ACE的性能不依赖于需要调整的参数设置,从而导致一种易于在应用程序中使用的方法。展示的结果是使用数据分析比赛提供的训练和测试数据,旨在鼓励开发通过参加比赛而获得的遥感提取生态信息的方法。使用由分级分类构成的一对一MI-ACE技术进行的实验结果,其中树冠首先分类为一种属类别和一种属类别。由竞赛组织者提供的测试数据上物种级别的1级分类准确度为86.4%,交叉熵为0.9395,而没有发布测试数据的真实性。类似地,对训练数据计算相同的评估指标,其中等级1分类精度为95.62%,交叉熵为0.2649。结果表明,所提出的方法不仅可以对多数物种进行分类,而且可以对稀有物种进行分类。

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