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Improved change detection through post change classification: A case study using synthetic hyperspectral imagery

机译:通过变更后分类改进变更检测:使用合成高光谱图像的案例研究

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Change detection is a well studied problem and well accepted taxonomies, although not formalized, exist in the literature to some degree. The basic taxonomy includes pre-processing, change detection and post processing. The final stage typically addresses the selection of appropriate thresholds, this work extends it to encompass classification in order to reduce false alarms. This effort leverages synthetic data generation capabilities to investigate the feasibility of the proposed postchange classification methodology to distinguish significant and insignificant change results produced from change detection analysis. Results demonstrate that post-change classification improves false alarm performance for a principal component analysis-based change detector by nearly 2-orders of magnitude for cases when high detection rates are required.
机译:变更检测是一个经过充分研究的问题,并且公认的分类法尽管没有形式化,但在一定程度上存在于文献中。基本分类法包括预处理,更改检测和后处理。最后阶段通常处理适当阈值的选择,这项工作将其扩展到涵盖分类,以减少错误警报。这项工作利用综合数据生成功能来研究拟议的变更后分类方法的可行性,以区分由变更检测分析产生的重要和不重要的变更结果。结果表明,在需要高检测率的情况下,变更后分类可将基于主成分分析的变更检测器的虚警性能提高近2个数量级。

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