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Knowledge from Markers in Watershed Segmentation

机译:分水岭分割中来自标记的知识

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摘要

Due to its broad impact in many image analysis applications, the problem of image segmentation has been widely studied. However, there still does not exist any automatic segmentation procedure able to deal accurately with any kind of image. Thus semi-automatic segmentation methods may be seen as an appropriate alternative to solve the segmentation problem. Among these methods, the marker-based watershed has been successfully involved in various domains. In this algorithm, the user may locate the markers, which are used only as the initial starting positions of the regions to be segmented. We propose to base the segmentation process also on the contents of the markers through a supervised pixel classification, thus resulting in a knowledge-based watershed segmentation where the knowledge is built from the markers. Our contribution has been evaluated through some comparative tests with some state-of-the-art methods on the well-known Berkeley Segmentation Dataset.
机译:由于其在许多图像分析应用中的广泛影响,图像分割问题已得到广泛研究。但是,仍然不存在任何能够准确处理任何类型图像的自动分割程序。因此,半自动分割方法可以被视为解决分割问题的合适替代方法。在这些方法中,基于标记的分水岭已成功地涉及各个领域。在该算法中,用户可以定位标记,这些标记仅用作要分割的区域的初始起始位置。我们建议通过有监督的像素分类,在标记内容的基础上进行分割,从而实现基于知识的分水岭分割,其中从标记中构建知识。我们对著名的伯克利细分数据集采用了一些最新方法,通过一些比较测试对我们的贡献进行了评估。

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