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Auto-labeling algorithms on CA based interactive segmentation for high resolution remote sensing images

机译:基于CA的高分辨率遥感影像交互式分割自动标注算法

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Interactive image segmentation based on Cellular Automata (CA) has shown its effectivity of object extraction in photographs or video frames. But in high resolution remote sensing images it will be a heavy work to manually label out all of objects, especially the mixture-up objects, in large scale of map area. Three kinds of auto-labelling algorithms are studied to generate labels automatically just according to a few of artificial sample labels. These algorithms deal with the similarity between unlabeled area and the labeled samples in the aspects of spectrum, shapes, and mixture pattern respectively, and then make the use of maximum likelihood labelling, shape calculation by screening contours, and spatial clustering comprehensively to extract some feature pixels to construct new labels. The feasibility of the algorithms has been shown by experimental results of different types of high resolution remote sensing images retrieved from google earth.
机译:基于元胞自动机(CA)的交互式图像分割已显示出其在照片或视频帧中进行对象提取的有效性。但是在高分辨率遥感影像中,要手动标注出大比例尺地图区域中的所有对象,尤其是混合对象,将是一项繁重的工作。研究了三种自动标记算法,仅根据一些人工样本标记就可以自动生成标记。这些算法分别在光谱,形状和混合模式方面处理了未标记区域和被标记样本之间的相似性,然后利用最大似然标记,通过轮廓轮廓计算形状和空间聚类来全面提取某些特征。像素来构造新标签。从Google Earth检索到的不同类型的高分辨率遥感影像的实验结果表明了该算法的可行性。

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