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CollageParsing: Nonparametric Scene Parsing by Adaptive Overlapping Windows

机译:孤立性重叠窗口的非参数场景解析

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Scene parsing is the problem of assigning a semantic label to every pixel in an image. Though an ambitious task, impressive advances have been made in recent years, in particular in scalable nonparametric techniques suitable for open-universe databases. This paper presents the CollageParsing algorithm for scalable nonparametric scene parsing. In contrast to common practice in recent nonparametric approaches, CollageParsing reasons about mid-level windows that are designed to capture entire objects, instead of low-level superpixels that tend to fragment objects. On a standard benchmark consisting of outdoor scenes from the LabelMe database, CollageParsing achieves state-of-the-art nonparametric scene parsing results with 7 to 11% higher average per-class accuracy than recent nonparametric approaches.
机译:场景解析是将语义标签分配给图像中的每个像素的问题。 虽然雄心勃勃的任务,但近年来已经提出了令人印象深刻的进展,特别是适用于开放宇宙数据库的可扩展非参数技术。 本文介绍了可扩展的非参数场景解析的拼接倒进算法。 与近期非参数方法的常见做法相比,旨在捕获整个物体的中级窗口的拼接原因,而不是倾向于碎片对象的低级超顶。 在由LabelMe数据库中的户外场景组成的标准基准中,拼接扑付杠实现最先进的非参数场景解析结果,比近期非参数方法更高的平均每级精度高7到11%。

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