A “Difference-in-Differences”-Based Method for Unsupervised Change Detection in Season-Varying Images

Yuheng Yuan;Xuehong Chen;Kai Tang;Jin Chen
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Abstract

Unsupervised change detection in season-varying images remains challenging due to the pseudo-changes induced by the seasonal variation of the images acquired at different times. Although various transformations [e.g., multivariate alteration detection (MAD), slow feature analysis (SFAs), etc.] have been developed to alleviate this issue, the complicated seasonal variation in a heterogenous landscape cannot be well addressed. This study developed a novel “difference-in-differences”-based change detection (DIDCD) method, which calculates the change magnitude by performing two difference operations between the changes observed in the target pixel and those in the control group. The control group is established by a combined method of k-means clustering and minimum covariance determinant (MCD), which identifies similar pixels that undergo parallel seasonal changes compared to the target pixels. Through DID operation, DIDCD eliminates seasonal variation and accurately identifies land cover change. DIDCD is evaluated using four pairs of images under both season-consistent and season-varying conditions across two scenarios (urban expansion and forest fire disturbance). The results demonstrate that DIDCD effectively suppresses the pseudo-changes induced by the seasonal variation and outperforms the existing unsupervised change detection algorithms.
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基于 "差分法 "的季节变化图像无监督变化检测方法
季节变化图像的无监督变化检测仍然具有挑战性,因为不同时间获取的图像在季节变化中会引起伪变化。虽然已经开发了各种转换[例如,多变量变化检测(MAD),慢特征分析(sfa)等]来缓解这一问题,但异质性景观中复杂的季节变化无法很好地解决。本研究开发了一种新的基于“差中差”的变化检测(DIDCD)方法,该方法通过对目标像素和对照组中观察到的变化进行两次差值运算来计算变化幅度。对照组采用k-均值聚类和最小协方差行列式(MCD)相结合的方法建立,该方法识别与目标像元相比经历平行季节变化的相似像元。DIDCD通过DID操作消除季节变化,准确识别土地覆盖变化。在两种情景(城市扩张和森林火灾干扰)下,使用季节一致和季节变化条件下的四对图像对DIDCD进行评估。结果表明,DIDCD有效地抑制了季节变化引起的伪变化,优于现有的无监督变化检测算法。
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