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A new fast approach to nonparametric scene parsing

机译:一种新的快速非参数场景解析方法

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摘要

Scene parsing is a challenging research area in computer vision. It provides a semantic label for each pixel in image. Most scene parsing approaches are parametric based which need a model that is acquired through a learning stage. In this paper, a new nonparametric approach to scene parsing is proposed which does not require a learning stage. All introduced nonparametric approaches are based on patch correspondence. Our proposed method does not require explicit patch matching which makes it fast and effective. The proposed approach has two parts. In the first part, a new generative approach to transfer semantic labels from a training image to an unlabelled test image is proposed. To do this, a graphical model is constructed over regions of both the training and test images. Then, based on the proposed graphical model, a quadratic convex function is defined on likelihood probability of each region. Cost function is defined such that contextual information and object-level information are both considered. In the second part of our approach, by using the proposed method of transfer knowledge, a new nonparametric scene parsing approach is given. To evaluate the proposed approach, it is applied on the MSRC-21, Stanford background, LMO, and SUN datasets. The obtained results show that our approach outperforms comparable state-of-the-art nonparametric approaches.
机译:场景解析是计算机视觉中一个具有挑战性的研究领域。它为图像中的每个像素提供了一个语义标签。大多数场景解析方法都是基于参数的,因此需要通过学习阶段获得的模型。在本文中,提出了一种不需要场景学习的新的非参数场景解析方法。所有引入的非参数方法均基于补丁对应。我们提出的方法不需要显着的补丁匹配,这使得它快速有效。提议的方法包括两个部分。在第一部分中,提出了一种新的生成方法,将语义标签从训练图像转移到未标记的测试图像。为此,在训练图像和测试图像的区域上构建图形模型。然后,基于提出的图形模型,在每个区域的似然概率上定义了二次凸函数。定义成本函数,以便同时考虑上下文信息和对象级别信息。在我们方法的第二部分中,通过使用所提出的转移知识的方法,给出了一种新的非参数场景解析方法。为了评估所提出的方法,将其应用于MSRC-21,斯坦福背景,LMO和SUN数据集。获得的结果表明,我们的方法优于可比较的最新非参数方法。

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