Object- versus pixel-based building detection for disaster response

D. Dubois, R. Lepage
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引用次数: 4

Abstract

Recent disasters have shown that there is a growing interest for remotely sensed data to support decision makers and emergency teams in the field. Fast and accurate detection of buildings and sustained damage is of great importance. Current methods rely on numerous photo-interpreters to visually analyze the data. Multiple pixel-based methods exist to classify pixels as being part of a building or not but results vary widely and precision is often poor with very high resolution images. This paper proposes an object-based solution to building detection and compares it to a traditional approach. Object-based classification clearly provides adequate results in much less time and thus is ideal for disaster response.
灾害响应中基于物体与基于像素的建筑物检测
最近发生的灾害表明,人们越来越有兴趣利用遥感数据来支持现场的决策者和应急小组。快速准确地检测建筑物和持续损坏是非常重要的。目前的方法依赖于大量的照片解释器来直观地分析数据。目前存在多种基于像素的方法来将像素分类为建筑物的一部分,但结果差异很大,并且对于非常高分辨率的图像,精度通常很差。本文提出了一种基于对象的建筑检测解决方案,并将其与传统方法进行了比较。基于对象的分类显然在更短的时间内提供了足够的结果,因此是灾难响应的理想选择。
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