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Image Segmentation Based on Semantic Knowledge and Hierarchical Conditional Random Fields

机译:基于语义知识和分层条件随机场的图像分割

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Semantic segmentation is a fundamental and challenging task for semantic mapping.Most of the existing approaches focus on taking advantage of deep learning and conditional random fields (CRFs) based techniques to acquire pixel-level labeling.One major issue among these methods is the limited capacity of deep learning techniques on utilizing the obvious relationships among different objects which are specified as semantic knowledge.For CRFs, their basic low-order forms cannot bring substantial enhancement for labeling performance.To this end, we propose a novel approach that employs semantic knowledge to intensify the image segmentation capability.The semantic constraints are established by constructing an ontology-based knowledge network.In particular, hierarchical conditional random fields fused with semantic knowledge are used to infer and optimize the final segmentation.Experimental comparison with the state-of-the-art semantic segmentation methods has been carried out.Results reveal that our method improves the performance in terms of pixel and object-level.
机译:语义分割是语义映射的一项基本且具有挑战性的任务,大多数现有方法集中于利用基于深度学习和条件随机场(CRF)的技术来获取像素级标签,这些方法中的一个主要问题是容量有限深度学习技术如何利用被指定为语义知识的不同对象之间的明显关系。对于CRF,它们的基本低阶形式不能为标记性能带来实质性的增强。为此,我们提出了一种新颖的方法,利用语义知识来通过构建基于本体的知识网络来建立语义约束,特别是将分层条件随机字段与语义知识融合,以推断和优化最终分割。进行了先进的语义分割方法。 l我们的方法在像素和对象级别方面提高了性能。

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