Automatic Building Extraction from VHR Satellite Image

R. Avudaiamma, S. Dayana, R. Prabhu, A. Swarnalatha
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引用次数: 3

Abstract

A satellite image contains natural region such as soil and vegetation and man created regions such as roads and buildings. Among these the precise location and identification of building features is one of the key information sources for urban planning, population estimation, land analysis, and environmental surveying. Previously low resolution satellite images were useful to analyze the features of buildings. Now-a- days due to the advancement of the technologies in the field of remote sensing, high spatial resolution imagery becomes available which provides more potential to automatically detect buildings. However, the high resolution image data contain rich information in the spatial domain which does not necessarily increase accuracy of the feature extraction significantly. Therefore, recent advances in the high resolution image processing is focused on the geometrical, spectral, statistical, contextual, and structural information extraction from the image. In this paper a technique to detect and to extract geometric features of the buildings in urban area from very high resolution (VHR) image has been proposed. The geometric features such as area, perimeter, centroid, solidity, convex area, are extracted. In order to analyze the performance of extraction, various edge detection mechanisms such as Sobel, Prewitt, Robert, Canny are implemented using Matlab. The performance analysis shows that canny operator with FCM clustering outperforms compared to conventional edge detection mechanisms.
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基于VHR卫星图像的建筑物自动提取
卫星图像包含自然区域,如土壤和植被,以及人为区域,如道路和建筑物。其中,建筑特征的精确定位和识别是城市规划、人口估算、土地分析和环境调查的关键信息来源之一。以前的低分辨率卫星图像对分析建筑物的特征很有用。随着遥感技术的不断进步,高空间分辨率影像的出现为建筑物的自动探测提供了更大的潜力。然而,高分辨率图像数据在空间域中包含了丰富的信息,这并不一定能显著提高特征提取的准确性。因此,高分辨率图像处理的最新进展集中在从图像中提取几何、光谱、统计、上下文和结构信息。提出了一种从甚高分辨率(VHR)图像中检测和提取城市建筑物几何特征的方法。提取几何特征,如面积、周长、质心、固体度、凸面积等。为了分析提取的性能,利用Matlab实现了Sobel、Prewitt、Robert、Canny等多种边缘检测机制。性能分析表明,与传统的边缘检测机制相比,canny算子与FCM聚类具有更好的性能。
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