结合分割和阴影的航拍图像构建识别

Keyan Ren, Hanxu Sun, Q. Jia, Jianbo Shi
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引用次数: 12

摘要

提出了一种新的高分辨率航拍图像的建筑检测算法。我们的算法根据照明模型利用建筑与阴影的几何关系,使其适用于在更一般的环境中检测建筑物,可能具有不规则的形状。我们使用图像分割为建筑和阴影检测提供空间支持。通过联合推理,提出了一种新的置信度方法来标记建筑段和阴影段:1)阴影的似然;2)建筑-阴影配置,3)建筑-建筑相似度。我们的方法在广泛的航空图像上进行了测试。定性和定量结果表明了该方法在背景杂波中检测和提取建筑物的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Building recognition from aerial images combining segmentation and shadow
We propose a novel building detection algorithm for processing high-resolution aerial images. Our algorithm exploits the building-shadow geometric relationship according to lighting models, making it suitable to detect buildings in a more general setting, possibly with irregular shapes. We use image segmentation to provide spatial support for both building and shadow detections. A novel confidence method is developed to label building and shadow segments by jointly reasoning: 1) the likelihood of shadows; 2) building-shadow configuration, and 3) building-building similarity. Our method is tested on a wide range of aerial images. Qualitative and quantitative results demonstrate its effectiveness on detecting and extracting buildings from background clutter.
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