On the use of regions for semantic image segmentation

Rui Hu, Diane Larlus, G. Csurka
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引用次数: 8

Abstract

There is a general trend in recent methods to use image regions (i.e. super-pixels) obtained in an unsupervised way to enhance the semantic image segmentation task. This paper proposes a detailed study on the role and the benefit of using these regions, at different steps of the segmentation process. For the purpose of this benchmark, we propose a simple system for semantic segmentation that uses a hierarchy of regions. A patch based system with similar settings is compared, which allows us to evaluate the contribution of each component of the system. Both systems are evaluated on the standard MSRC-21 dataset and obtain competitive results. We show that the proposed region based system can achieve good results without any complex regularization, while its patch based counterpart becomes competitive when using image prior and regularization methods. The latter benefit more from a CRF based regularization, yielding to state-of-the-art results with simple constraints based only on the leaf regions exploited in the pairwise potential.
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区域在语义图像分割中的应用
在最近的方法中,使用以无监督方式获得的图像区域(即超像素)来增强语义图像分割任务是一个普遍的趋势。本文提出了在分割过程的不同步骤中使用这些区域的作用和好处的详细研究。为了这个基准测试,我们提出了一个简单的使用区域层次结构的语义分割系统。与类似设置的基于补丁的系统进行比较,这使我们能够评估系统中每个组件的贡献。在标准MSRC-21数据集上对两种系统进行了评估,并获得了具有竞争力的结果。我们的研究表明,基于区域的系统在没有任何复杂正则化的情况下可以获得良好的效果,而基于补丁的系统在使用图像先验和正则化方法时会变得有竞争力。后者更多地受益于基于CRF的正则化,产生最先进的结果,仅基于在成对势中利用的叶区域的简单约束。
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