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Evaluation and error detection in digital image segmentation

机译:数字图像分割中的评估和错误检测

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Abstract: The purpose of automatic segmentation is to extract interesting regions and contours from a digital image. Today a very large number of segmentation algorithms are available, their efficiency is usually domain-dependent, i.e., they operate to different degrees of accuracy according to the parameters used which are tuned to specific application domains. A method for result evaluation and error detection in automatic segmentation is proposed. A mathematical and a physical description of possible errors are presented, and an algorithm for error detection is implemented. Three types of segmentation errors are analyzed: undersegmentation errors, oversegmentation errors, and boundary errors. An undersegmentation error occurs when pixels belonging to different semantic objects are grouped into a single region. Such errors are the most dangerous because they can invalidate the whole segmentation process. The oversegmentation error, on the contrary, occurs when a single semantic object is subdivided by segmentation into several regions. Small oversegmentation errors may be acceptable in many applications (especially in the medical field), as they can easily be rectified by merging object parts. A boundary error consists in a discrepancy between the boundaries of a semantic object and those of the segmented one. In real images, all these errors may often be encountered at the same time. The system implemented permits one to detect each type of error, at the pixel level, by referring to a manually segmented image obtained by an expert. It produces a report on segmentation results, for both a whole image and single regions. !4
机译:摘要:自动分割的目的是从数字图像中提取有趣的区域和轮廓。如今,已经有大量的分割算法可用,它们的效率通常取决于领域,即,根据所使用的参数调整到特定的应用领域时,它们以不同的精度运行。提出了一种自动分割结果评估与错误检测方法。提出了可能的错误的数学和物理描述,并实现了用于错误检测的算法。分析了三种类型的分割错误:分割不足的错误,分割过度的错误和边界错误。当属于不同语义对象的像素被分组到单个区域中时,发生细分不足错误。这样的错误是最危险的,因为它们会使整个分割过程无效。相反,当通过分割将单个语义对象细分为几个区域时,就会发生过分错误。在许多应用程序中(尤其是在医疗领域),较小的超细分误差是可以接受的,因为可以通过合并对象零件轻松地纠正它们。边界错误在于语义对象的边界与分段对象的边界之间的差异。在真实图像中,所有这些错误可能经常同时出现。所实施的系统允许通过参考专家获得的手动分割图像来在像素级别检测每种类型的错误。它针对整个图像和单个区域生成有关分割结果的报告。 !4

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