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Automatic change detection by evidential fusion of change indices

机译:通过证据融合变化指标自动检测变化

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The detection of changes affecting continental surfaces has important applications in hydrological, meteorological, and climatic modeling. We propose a way to improve mono-index change detection by a fusion of multi-index change detection results. This fusion is performed in the framework of the Dempster-Shafer evidence theory, which is particularly suited to the representation of imprecision and ignorance at the "no change"/"change" class border. Depending on the change detection index considered, we also need to determine the class number and features. This is done using the contrario theory approach rather than classical statistical tests. The proposed algorithm is applied to forest fire damage evaluation based on three popular change indices: normalized difference values, texture evolution, and mutual information (MI). We find that change index fusion is effective at reducing both false alarm and misdetection levels, due to the complementary nature of these indices.
机译:检测影响大陆表面的变化在水文,气象和气候模型中具有重要的应用。我们提出了一种通过融合多指标变化检测结果来改善单指标变化检测的方法。这种融合是在Dempster-Shafer证据理论的框架内进行的,该理论特别适合于“不变” /“不变”类别边界的不精确和无知的表示。根据所考虑的变化检测指数,我们还需要确定类编号和功能。这是使用反向理论方法而不是经典的统计检验完成的。该算法基于三种流行的变化指标:归一化差异值,纹理演化和互信息(MI),应用于森林火灾的危害评估。我们发现由于这些索引的互补性,变更索引融合可以有效降低误报和误检水平。

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