外墙的窗户检测

Haider Ali, C. Seifert, Nitin Jindal, L. Paletta, G. Paar
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引用次数: 76

摘要

这项工作是关于一种新的方法在城市环境中的窗口检测及其在视觉系统应用中的多种用途。提出的窗口检测方法包括适当的早期图像处理,提供多尺度Haar小波表示来确定图像块,然后将图像块馈送到级联分类器中用于窗口检测任务。分类器从一个由Gentle Adaboost驱动的级联决策树中学习,该决策树基于来自训练图像的屏蔽信息,并针对基于窗口的地面真实信息进行测试,这些信息与公开的原始建筑图像数据库一起。实验结果表明,单窗口检测在一定程度上是成功的,例如,用于建筑物识别,此外,分类器通常能够为城市环境的解释提供感兴趣区域算子。这种分类信息的提取有利于索引到城市物体识别的搜索空间中,并旨在为三维信息处理系统中的精确后处理提供语义焦点。目标应用是(i)针对未校准图像的移动服务,例如用于旅游指南,(ii)稀疏的3D城市建模,以及(iii)来自高分辨率图像的变形分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Window Detection in Facades
This work is about a novel methodology for window detection in urban environments and its multiple use in vision system applications. The presented method for window detection includes appropriate early image processing, provides a multi-scale Haar wavelet representation for the determination of image tiles which is then fed into a cascaded classifier for the task of window detection. The classifier is learned from a Gentle Adaboost driven cascaded decision tree on masked information from training imagery and is tested towards window based ground truth information which is together with the original building image databases publicly available. The experimental results demonstrate that single window detection is to a sufficient degree successful, e.g., for the purpose of building recognition, and, furthermore, that the classifier is in general capable to provide a region of interest operator for the interpretation of urban environments. The extraction of this categorical information is beneficial to index into search spaces for urban object recognition as well as aiming towards providing a semantic focus for accurate post-processing in 3D information processing systems. Targeted applications are (i) mobile services on uncalibrated imagery, e.g. , for tourist guidance, (ii) sparse 3D city modeling, and (iii) deformation analysis from high resolution imagery.
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