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Weakly Supervised Deep Semantic Segmentation Using CNN and ELM with Semantic Candidate Regions

机译:使用CNN和ELM具有语义候选地区的弱监督深度语义分割

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摘要

The task of semantic segmentation is to obtain strong pixel-level annotations for each pixel in the image. For fully supervised semantic segmentation, the task is achieved by a segmentation model trained using pixel-level annotations. However, the pixel-level annotation process is very expensive and time-consuming. To reduce the cost, the paper proposes a semantic candidate regions trained extreme learning machine (ELM) method with image-level labels to achieve pixel-level labels mapping. In this work, the paper casts the pixel mapping problem into a candidate region semantic inference problem. Specifically, after segmenting each image into a set of superpixels, superpixels are automatically combined to achieve segmentation of candidate region according to the number of image-level labels. Semantic inference of candidate regions is realized based on the relationship and neighborhood rough set associated with semantic labels. Finally, the paper trains the ELM using the candidate regions of the inferred labels to classify the test candidate regions. The experiment is verified on the MSRC dataset and PASCAL VOC 2012, which are popularly used in semantic segmentation. The experimental results show that the proposed method outperforms several state-of-the-art approaches for deep semantic segmentation.
机译:语义分割的任务是为图像中的每个像素获得强的像素级注释。对于完全监督的语义分割,任务是通过使用像素级注释训练的分段模型来实现的。然而,像素级注释过程非常昂贵且耗时。为了降低成本,本文提出了一个语义候选区域训练有素的极端学习机(ELM)方法,具有图像级标签,实现像素级标签映射。在这项工作中,纸张将像素映射问题施放到候选区域语义推理问题中。具体地,在将每个图像分段为一组超像素之后,根据图像级标签的数量自动组合以自动组合以实现候选区域的分割。基于与语义标签相关联的关系和邻域粗糙集实现候选地区的语义推断。最后,纸张使用推断标签的候选区域培训ELM来分类测试候选地区。在MSRC数据集和Pascal VOC 2012上验证了实验,这普遍用于语义分割。实验结果表明,该方法优于深度语义分割的几种最先进的方法。

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