Urban area detection using multiple Kernel Learning and graph cut

Chao Tao, Yihua Tan, Jin-Gang Yu, J. Tian
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引用次数: 9

Abstract

This paper presents a new method for urban detection from high-spatial-resolution satellite images. Unlike traditional approaches using only texture information for urban detection, we integrate several complementary image features through multiple Kernel Learning framework, and demonstrate that fusing multiple features can help improving urban detection accuracy rate. Furthermore, since that most of supervised urban classification approaches are mainly based on block-based image interpretation, the resulting urban boundary is very coarse. To handle this, we formulate the urban boundary refinement as a binary labeling problem, and propose a graph cut based approach to solve it. Experimental results show that the proposed approach outperforms the existing algorithm in terms of detection accuracy.
基于多核学习和图割的城市区域检测
提出了一种基于高空间分辨率卫星图像的城市检测新方法。与传统的仅使用纹理信息进行城市检测的方法不同,我们通过多个核学习框架将多个互补的图像特征融合在一起,并证明了融合多个特征有助于提高城市检测的准确率。此外,由于大多数监督城市分类方法主要基于基于块的图像判读,因此得到的城市边界非常粗糙。为了解决这个问题,我们将城市边界的细化表述为一个二元标注问题,并提出了一种基于图切的方法来解决这个问题。实验结果表明,该方法在检测精度上优于现有算法。
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