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Non-parametric spatially constrained local prior for scene parsing on real-world data

机译:在现场数据上解析场景之前,非参数限制本地

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摘要

Scene parsing aims to recognize the object category of every pixel in scene images, and it plays a central role in image content understanding and computer vision applications. However, accurate scene parsing from unconstrained real-world data is still a challenging task. In this paper, we present the non-parametric Spatially Constrained Local Prior (SCLP) for scene parsing on realistic data. For a given query image, the non-parametric SCLP is learnt by first retrieving a subset of most similar training images to the query image and then collecting prior information about object co-occurrence statistics between spatial image blocks and between adjacent superpixels from the retrieved subset. The SCLP is powerful in capturing both long- and short-range context about inter-object correlations in the query image and can be effectively integrated with traditional visual features to refine the classification results. Our experiments on the SIFT Flow and PASCAL-Context benchmark datasets show that the non-parametric SCLP used in conjunction with superpixel-level visual features achieves one of the top performance compared with state-of-the-art approaches.
机译:场景解析旨在识别场景图像中每个像素的对象类别,并且它在图像内容理解和计算机视觉应用程序中扮演核心作用。然而,从无约束的现实世界数据解析的准确场景仍然是一个具有挑战性的任务。在本文中,我们在现实数据上介绍了场景解析的非参数空间约束的本地(SCLP)。对于给定查询图像,通过首先将大多数类似训练图像的子集检索到查询图像,然后从检索的子集中收集关于空间图像块之间的对象共发生统计信息的先前信息,从检索到的子集中收集有关物体共发生统计信息的先前信息来学习非参数SCLP。 。 SCLP在捕获关于查询图像中的对象间相关性的长期和短程上下文方面是强大的,并且可以通过传统的视觉功能有效地集成,以优化分类结果。我们对Sift流程和Pascal-Context基准数据集的实验表明,与Superpixel-Level视觉功能结合使用的非参数SCLP实现了与最先进的方法相比的顶部性能之一。

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