Semantic relevance of current image segmentation algorithms

F. Riaz, M. Dinis-Ribeiro, M. Coimbra
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引用次数: 1

Abstract

Several image classification problems are handled using a classical statistical pattern recognition methodology: image segmentation, visual feature extraction, classification. The accuracy of the solution is typically measured by comparing automatic results with manual classification ones, where the distinction between these three steps is not clear at all. In this paper we will focus on one of these steps by addressing the following question: does the visual relevance exploited by segmentation algorithms reflect the semantic relevance of the manual annotation performed by the user? For this purpose we chose a gastroenterology scenario where clinicians classified a set of images into three different types (cancer, pre-cancer, normal), and manually segmented the area they believe was responsible for this classification. Afterwards, we have quantified the performance of two popular segmentation algorithms (mean shift, normalized cuts) on how well they produced one image patch that approximates manual annotation. Results showed that, for this case study, this resemblance is quite close for a large percentage of the images when using normalized cuts.
当前图像分割算法的语义相关性
几个图像分类问题处理使用经典的统计模式识别方法:图像分割,视觉特征提取,分类。解决方案的准确性通常是通过比较自动结果和人工分类结果来衡量的,其中这三个步骤之间的区别根本不清楚。在本文中,我们将通过解决以下问题来关注其中一个步骤:分割算法所利用的视觉相关性是否反映了用户手动注释的语义相关性?为此,我们选择了一个胃肠病学的场景,临床医生将一组图像分为三种不同的类型(癌症、癌前、正常),并手动分割他们认为负责这种分类的区域。之后,我们量化了两种流行的分割算法(mean shift, normalized cuts)的性能,看它们产生的图像补丁接近手动注释的程度。结果表明,对于本案例研究,当使用归一化切割时,这种相似性对于很大比例的图像非常接近。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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