比较遥感图像分割标记的分类指标

P. Maillard, David A Clausi
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引用次数: 10

摘要

图像分割和标记是图像分类中的两个概念操作。随着遥感界使用更强大的空间约束分割程序,可以探索新的标记可能性。不是为单个观察(像素)分配标签,而是一次性标记图像的整个部分,这意味着使用多变量样本而不是像素向量。这种图像分类方法还为使用关于类的先验信息(如现有映射或对象签名库)提供了新的可能性。本文论述了这两个问题。首先,提出了一种标记方案,该方案使用“认知推理”方法从不完整的先验信息中收集有关类别的证据。然后,对标签分配的五个不同指标进行比较,并通过投票方案进行组合。结果表明,根据度量的选择,可以得到非常不同的结果。通过投票的度量组合,作为一种次优方法,不一定能提供最好的结果,但可能是只选择一个度量的安全替代方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparing classification metrics for labeling segmented remote sensing images
Image segmentation and labelling are the two conceptual operations in image classification. As the remote sensing community uses more powerful segmentation procedures with spatial constraint, new possibilities can be explored for labelling. Instead of assigning a label to a single observation (pixel), whole segments of image are labelled at once implying the use of multivariate samples rather than pixel vectors. This approach to image classification also offers new possibilities for using a priori information about the classes such as existing maps or object signature libraries. The present paper addresses the two issues. First a labelling scheme is presented that gathers evidence about the classes from incomplete a priori information using a "cognitive reasoning" approach. Then, five different metrics are compared for the label assignment and are combined through a voting scheme. The results show that very different results can be obtained depending on the metric chosen. The metric combination through voting, being a suboptimal approach does not necessarily provide the best results but could be a safe alternative to choosing only one metric.
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