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Building Change Detection From Multitemporal High-Resolution Remotely Sensed Images Based on a Morphological Building Index

机译:基于形态建筑物指数的多时间高分辨率遥感影像建筑物变化检测

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摘要

In this study, urban building change detection is investigated, considering that buildings are one of the most dynamic structures in urban areas. To this aim, a novel building change detection approach for multitemporal high-resolution images is proposed based on a recently developed morphological building index (MBI), which is able to automatically indicate the presence of buildings from high-resolution images. In the MBI-based change detection framework, the changed building information is decomposed into MBI, spectral, and shape conditions. A variation of the MBI is a basic condition for the indication of changed buildings. Besides, the spectral information is used as a mask since the change of buildings is primarily related to the spectral variation, and the shape condition is then used as a post-filter to remove irregular structures such as noise and road-like narrow objects. The change detection framework is carried out based on a threshold-based processing at both the feature and decision levels. The advantages of the proposed method are that it does not need any training samples and it is capable of reducing human labor, considering the fact that the current building change detection methods are totally reliant on visual interpretation. The proposed method is evaluated with a QuickBird dataset from 2002 and 2005 covering Hongshan District of Wuhan City, China. The experiments show that the proposed change detection algorithms can achieve satisfactory correctness rates (over 80%) with a low level of total errors (less than 10%), and give better results than the supervised change detection using the support vector machine (SVM).
机译:在这项研究中,考虑到建筑物是城市地区最活跃的结构之一,因此对城市建筑物变化检测进行了研究。为此,基于最近开发的形态学建筑物索引(MBI),提出了一种用于多时相高分辨率图像的新颖建筑物变化检测方法,该方法能够自动指示高分辨率图像中建筑物的存在。在基于MBI的变更检测框架中,变更后的建筑物信息被分解为MBI,光谱和形状条件。 MBI的变化是指示建筑物已更改的基本条件。此外,由于建筑物的变化主要与光谱变化有关,因此光谱信息被用作遮罩,然后将形状条件用作后置滤波器以去除不规则结构,例如噪音和类似道路的狭窄物体。更改检测框架是基于特征和决策级别上基于阈值的处理来执行的。考虑到当前的建筑物变化检测方法完全依赖于视觉解释这一事实,所提出的方法的优点在于它不需要任何训练样本并且能够减少人工。使用涵盖2002年和2005年武汉市红山区的QuickBird数据集对提出的方法进行了评估。实验表明,与使用支持向量机(SVM)进行监督的变更检测相比,所提出的变更检测算法可以实现令人满意的正确率(超过80%),并且总错误率较低(小于10%),并且可以提供更好的结果。 。

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