Learning a Dictionary of Shape Epitomes with Applications to Image Labeling.

Liang-Chieh Chen, George Papandreou, Alan L Yuille
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引用次数: 17

Abstract

The first main contribution of this paper is a novel method for representing images based on a dictionary of shape epitomes. These shape epitomes represent the local edge structure of the image and include hidden variables to encode shift and rotations. They are learnt in an unsupervised manner from groundtruth edges. This dictionary is compact but is also able to capture the typical shapes of edges in natural images. In this paper, we illustrate the shape epitomes by applying them to the image labeling task. In other work, described in the supplementary material, we apply them to edge detection and image modeling. We apply shape epitomes to image labeling by using Conditional Random Field (CRF) Models. They are alternatives to the superpixel or pixel representations used in most CRFs. In our approach, the shape of an image patch is encoded by a shape epitome from the dictionary. Unlike the superpixel representation, our method avoids making early decisions which cannot be reversed. Our resulting hierarchical CRFs efficiently capture both local and global class co-occurrence properties. We demonstrate its quantitative and qualitative properties of our approach with image labeling experiments on two standard datasets: MSRC-21 and Stanford Background.

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学习形状缩影词典及其在图像标记中的应用。
本文的第一个主要贡献是一种基于形状缩影字典的图像表示新方法。这些形状缩影表示图像的局部边缘结构,并包含隐藏变量来编码移位和旋转。它们是以一种无监督的方式从底层真理边缘学习的。这个字典是紧凑的,但也能够捕捉自然图像的典型形状的边缘。在本文中,我们通过将形状缩影应用于图像标记任务来说明形状缩影。在补充材料中描述的其他工作中,我们将它们应用于边缘检测和图像建模。我们利用条件随机场(CRF)模型将形状缩影应用于图像标注。它们是大多数crf中使用的超像素或像素表示的替代方案。在我们的方法中,图像patch的形状由字典中的形状缩影编码。与超像素表示不同,我们的方法避免了无法逆转的早期决策。我们得到的分层crf有效地捕获了局部和全局类共现属性。我们通过两个标准数据集(MSRC-21和Stanford Background)上的图像标记实验证明了我们的方法的定量和定性特性。
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