基于地物提升模型的高分辨率城市遥感影像自动解译方法

Xian Sun, Hui Long, Hongqi Wang
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引用次数: 0

摘要

为了更有效、更全面地解译城市遥感影像,本文提出了一种基于目标增强模型的自动解译方法。该方法首先通过构建分层目标网络,将分割与识别结合起来,有效地改善了其他方法中存在的滑动窗口可修改的目标检测问题。然后,结合颜色、纹理、形状和位置等多个特征进行概率学习,训练出一个多类分类器,并根据分类值对所有目标进行标注。该方法还应用了空间平滑,结合上下文信息来消除背景干扰、遮挡等造成的不利影响。经过矢量化处理,给出了最终结果。实验结果表明,该方法具有较高的解译精度和鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An automatic interpretation approach for high resolution urban remote sensing image using objects-based boosting model
For the purpose of interpreting urban remote sensing images more effectively and comprehensively, this paper proposes a new automatic approach using objects-based boosting model. The approach associates segmentation with recognition by constructing a hierarchical objects network at first, which effectively improves the problem of detecting targets with a modifiable sliding window existed in other methods. Then the probabilistic learning integrating multiple features including color, texture, shape and location is performed to train a multi-class classifier, and label all of the objects according to their classification values. The approach also applies spatial smoothing which incorporates contextual information to eliminate the adverse effects caused by background disturbance, occlusion and so on. After vectorization procedure, final result is given. Experiments demonstrate that proposed approach achieve high exactness and robustness in interpreting manifold urban remote sensing images.
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