Building Change Detection Based on Markov Random Field: Exploiting Both Pixel and Corner Features

Kaibin Zong, A. Sowmya, J. Trinder
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引用次数: 1

Abstract

Map databases usually suffer from obsolete scene details due to frequently occurring changes, therefore automatic change detection has become vital. Previous research has demonstrated that Markov random field (MRF) is an effective method for image classification, in which both per pixel features and contextual relations between neighbouring points are incorporated into one framework, and the problem solved by means of maximum a posteriori (MAP) criterion. However, with the advent of high resolution images, other types of spatial information (e.g. corners and edges) can also be extracted and treated as clues for detecting changes, which is usually ignored in the previous work. In this paper, we propose a framework for building change detection from high resolution images based on Markov random field that exploits all spectral, spatial and contextual features. The initial detection results are obtained based on pixel level classification and MRF. Following that, corners are extracted and building corner candidates are determined via classification. All candidates are then refined based on previous MRF results and connected by a weighted edge map. Hereafter, building changes are initialized by the area included in the connected corners (refined) and the MRF is optimized again to improve previous outputs. Final results are achieved after some suitable post processing steps. Experimental results demonstrate the capability of the proposed method for building change detection and the usefulness of spatial features.
基于马尔可夫随机场的建筑变化检测:利用像素和角点特征
由于频繁发生的变化,地图数据库经常会出现场景细节过时的问题,因此自动变化检测变得至关重要。已有研究表明,马尔可夫随机场(MRF)是一种有效的图像分类方法,该方法将每像素特征和相邻点之间的上下文关系结合到一个框架中,并通过最大后验准则(MAP)来解决问题。然而,随着高分辨率图像的出现,其他类型的空间信息(如角和边缘)也可以被提取出来,并作为检测变化的线索,这在以前的工作中通常被忽略。在本文中,我们提出了一个基于马尔可夫随机场的高分辨率图像构建变化检测框架,该框架利用了所有光谱、空间和上下文特征。初始检测结果是基于像素级分类和MRF得到的。然后提取角点,通过分类确定候选建筑角点。然后根据先前的MRF结果对所有候选者进行细化,并通过加权边缘图进行连接。此后,建筑变化由连接角(细化)中包含的面积初始化,并再次优化MRF以改进之前的输出。经过一些适当的后期处理步骤后,最终结果得到了实现。实验结果证明了该方法对建筑物变化检测的能力和空间特征的有效性。
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