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Superpixel Correspondence for Non-parametric Scene Parsing of Natural Images

机译:用于自然图像的非参数场景的超像素对应

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Scene parsing refers to the task of labeling every pixel in an image with the class label it belongs to. In this paper, we propose a novel scalable non-parametric scene parsing system based on superpixels correspondence. The non-parametric approach requires almost no training and can scale up to datasets with thousands of labels. This involves retrieving a set of images similar to the query image, followed by superpixel matching of the query image with the retrieval set. Finally, our system warps the annotation results of superpixel matching, and integrates multiple cues in a Markov Random Field (MRF) to obtain an accurate segmentation of the query image. Our non-parametric scene parsing achieves promising results on the LabelMe Outdoor dataset. The system has limited parameters, and captures contextual information naturally in the retrieval and alignment procedure.
机译:场景解析是指用它所属的类标签标记图像中的每个像素的任务。在本文中,我们提出了一种基于Superpixels对应的新颖可扩展的非参数场景解析系统。非参数方法几乎不需要培训,并且可以扩展到数千个标签的数据集。这涉及检索类似于查询图像的一组图像,然后是与检索集的查询图像的Superpixel匹配。最后,我们的系统扭曲了Superpixel匹配的注释结果,并在Markov随机字段(MRF)中集成了多个线索,以获得查询图像的准确分割。我们的非参数场景解析达到了LabelMe户外数据集的有希望的结果。系统的参数有限,并且在检索和对准过程中自然捕获上下文信息。

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