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Method of Image Segmentation on High-Resolution Image and Classification for Land Covers

机译:高分辨率图像的图像分割方法及土地覆被分类

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Image segmentation is a process of delineating an image into homogeneous polygons related to objects on the ground, and it is the foundation for further image analysis and interpretation. Low- or medium-resolution remotely sensed image usually leads to low accuracy of image segmentation because of large pixel sizes and a lot of mixed pixels. Thus, high-resolution image will probably result in increase of image segmentation accuracy because of smaller area covered by each pixel and reduced mixed pixels. This paper presents a study of QuickBird image segmentation for classification of land covers by mean-shift algorithm, the study area includes 1024 * 1024 pixels. The result showed that: the mean-shift algorithm led to a high accuracy of classification and Computing time for segmentation at different scales was also analyzed.
机译:图像分割是将图像描绘成与地面上的物体相关的同质多边形的过程,并且它是进一步进行图像分析和解释的基础。低分辨率或中分辨率的遥感图像通常会由于大像素尺寸和大量混合像素而导致图像分割的准确性降低。因此,由于每个像素覆盖的面积较小,并且混合像素减少,因此高分辨率图像可能会导致图像分割精度提高。本文提出了一种利用均值漂移算法对QuickBird图像分割进行土地覆盖分类的方法,研究区域包括1024 * 1024像素。结果表明:均值漂移算法具有较高的分类精度,并对不同尺度下的分割时间进行了分析。

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