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首页> 外文期刊>Iranian Journal of Science and Technology, Transactions of Electrical Engineering >Presenting an Object-Based Approach Using Image Edges to Detect Building Boundaries from High Spatial Resolution Images
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Presenting an Object-Based Approach Using Image Edges to Detect Building Boundaries from High Spatial Resolution Images

机译:提出一种基于对象的方法,该方法使用图像边缘从高空间分辨率图像中检测建筑物边界

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摘要

Although various building detection algorithms from high spatial resolution satellite (HSRS) images have been presented in recent years, there are yet some difficulties to detect building boundaries for mapping purposes. The present study aims to propose a new approach to detect building boundaries from HSRS images by focusing on higher detection rates. The approach utilizes the idea of object-based image processing. However, it has an innovative vision using image edges instead of traditional image segments as objects. To evaluate the efficiency of the proposed approach, two datasets which have different contrast between building and non-building areas, are used: the first dataset has a high contrast between building and non-building areas (HC) and second has a low contrast (LC). The results are compared with the results of two segmentation-based algorithms, i.e., classification based on edge-based segmentation (CBES) and classification based on multi-resolution segmentation (CBMS). The comparisons indicate higher efficiency of the proposed approach for the HC dataset with 6-14% higher detection rate (lower omission error) than the two segmentation-based algorithms. For the LC dataset, the proposed approach is already more efficient than CBMS with 10-25% higher detection rate. However, it has lower efficiency than CBES with 15-36% higher omission errors. Though, the proposed approach is generally more robust than CBES and CBMS algorithms based on standard deviation values of evaluation metrics.
机译:尽管近年来已经提出了来自高空间分辨率卫星(HSRS)图像的各种建筑物检测算法,但是为映射目的检测建筑物边界仍然存在一些困难。本研究旨在提出一种通过关注更高的检测率来从HSRS图像检测建筑物边界的新方法。该方法利用了基于对象的图像处理的思想。但是,它具有使用图像边缘而不是传统图像段作为对象的创新愿景。为了评估所提出方法的效率,使用了两个在建筑区域和非建筑区域之间具有不同对比度的数据集:第一个数据集在建筑和非建筑区域(HC)之间具有高对比度,第二个数据集具有较低的对比度( LC)。将结果与两种基于分割的算法的结果进行比较,即基于边缘的分割(CBES)的分类和基于多分辨率分割的分类(CBMS)。比较结果表明,所提出的方法对于HC数据集具有更高的效率,其检测率比两种基于分割的算法高出6-14%(较低的遗漏误差)。对于LC数据集,所提出的方法已经比CBMS更有效,检测率提高了10-25%。但是,它的效率比CBES低,而遗漏错误则高出15-36%。但是,基于评估指标的标准偏差值,提出的方法通常比CBES和CBMS算法更健壮。

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