基于结构化模板匹配的高分辨率卫星图像小目标识别技术

T. Modegi
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引用次数: 15

摘要

我们正在开发广域监测基础设施工具,利用地球观测卫星图像,用于受灾地区或交通状况等。特别是,我们正在专注于开发一个小型卫星图像对象识别工具,它可以在高分辨率卫星图像中提取汽车图案,例如QuickBird全色图像。虽然目前地球观测卫星上安装的光学传感器的分辨率已经非常先进,但其像素分辨率尚不足以通过现有的模式匹配技术来识别汽车等每个小物体。然而,高分辨率图像的模式匹配计算量越来越大,对卫星图像切片中包含的整个目标进行搜索将花费大量的时间。为了克服这些问题,本文提出了一种用于卫星图像小目标识别的结构化模板匹配技术,该技术包括微模板匹配、聚类微模板匹配和宏模板匹配。在本文中,我们描述了该方法的摘要,并给出了它的实验结果。
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Small object recognition techniques based on structured template matching for high-resolution satellite images
We are developing infrastructure tools of wide-area monitoring used for such as disaster damaged areas or traffic conditions, using Earth observation satellite images. Especially, we are focusing on developing a small object recognition tool for satellite images, which enables extract automobile patterns in high-resolution satellite images such as QuickBird panchromatic images, for example. Although, resolution of optical sensors installed in the current earth observation satellites has been highly advanced, their pixel resolution is not enough for identifying each small object such as an automobile by the currently available pattern matching techniques. Whereas, the pattern matching calculation load of high-resolution images becomes bigger, it will take tremendous time for searching whole objects included in a slice of satellite images. In order to overcome these problems, we propose a structured template matching technique for recognizing small objects in satellite images, which consists of a micro-template matching, clustered micro-template matching and macro-template matching. In this paper, we describe an abstract of our proposed method and present its experimental results.
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