基于多尺度滤波和网格划分的建筑物变化检测

Qi Bi, K. Qin, Han Zhang, Wenjun Han, Zhili Li, Kai Xu
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引用次数: 2

摘要

建筑物变化检测在高分辨率遥感应用中具有重要意义。多指标学习是目前最先进的建筑变化检测方法之一,但仍存在不能直接发现变化类型、MBI计算量大等缺点。本文提出了一种两阶段的建筑变更检测方法来解决这些问题。在第一阶段,计算多尺度滤波建筑指数(MFBI),以较快的速度和中等的精度检测各个时间点的建筑面积;在第二阶段,图像和相应的建筑地图被分割成网格。在每个网格中,计算T2时间与T1时间的建筑面积之比。每个网格被划分为三种变化模式中的一种,即显著增加、显著减少和近似不变。详尽的实验表明,该方法可以直接检测建筑变化类型,优于现有的多指标学习方法。
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Building Change Detection Based on Multi-Scale Filtering and Grid Partition
Building change detection is of great significance in high resolution remote sensing applications. Multi-index learning, one of the state-of-the-art building change detection methods, still has drawbacks like incapability to find change types directly and heavy computation consumption of MBI. In this paper, a two-stage building change detection method is proposed to address these problems. In the first stage, a multi-scale filtering building index (MFBI) is calculated to detect building areas in each temporal with fast speed and moderate accuracy. In the second stage, images and the corresponding building maps are partitioned into grids. In each grid, the ratio of building areas in time T2 and time T1 is calculated. Each grid is classified into one of the three change patterns, i.e., significantly increase, significantly decrease and approximately unchanged. Exhaustive experiments indicate that the proposed method can detect building change types directly and outperform the current multi-index learning method.
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