Hybrid Change Detection Based on ISFA for High-Resolution Imagery

Junfeng Xu, Chuan Zhao, Baoming Zhang, Yuzhun Lin, D. Yu
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引用次数: 2

Abstract

Hybrid change detection (HCD) for high-resolution imagery usually adopt decision-level method and rely on artificial design. To address this issue, we propose a novel feature-level fusion strategy for HCD based on iterative slow feature analysis (ISFA). First, objects are obtained by multiresolution segmentation of bi-temporal images respectively, and corresponding feature sets are constructed through stacking pixel- and object-level spectral features. Then, slow feature analysis (SFA) is used for transforming the feature sets into a new feature space at the first time. And iteration method with variable weights is introduced to get the last slow feature fusion map, where the changed pixels and unchanged pixels can be separated more easily. At last, K-means cluster is adopted to separate changed area and unchanged area automatically and generate final change result. Experiments were conducted on bi-temporal multi-spectral images, demonstrating the good performance of the proposed approach.
基于ISFA的高分辨率图像混合变化检测
高分辨率图像的混合变化检测通常采用决策级方法,依赖于人工设计。为了解决这个问题,我们提出了一种基于迭代慢特征分析(ISFA)的HCD特征级融合策略。首先,分别对双时相图像进行多分辨率分割获得目标,并通过叠加像元级和目标级光谱特征构建相应的特征集;然后,使用慢速特征分析(SFA)在第一时间将特征集转换为新的特征空间。引入变权迭代法得到最后的慢速特征融合图,使变化像素和不变像素更容易分离。最后,采用K-means聚类自动分离变化区域和不变区域,生成最终的变化结果。在双时相多光谱图像上进行了实验,验证了该方法的良好性能。
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