CRF-Based Figure/Ground Segmentation with Pixel-Level Sparse Coding and Neighborhood Interactions

L. Zhang, Yongri Piao
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引用次数: 0

Abstract

In this paper, we propose a new approach to learning a discriminative model for figure/ground segmentation by incorporating the bag-of-features and conditional random field (CRF) techniques. We advocate the use of image patches instead of superpixels as the basic processing unit. The latter has a homogeneous appearance and adheres to object boundaries, while an image patch often contains more discriminative information (e.g., local image structure) to distinguish its categories. We use pixel-level sparse coding to represent an image patch. With the proposed feature representation, the unary classifier achieves a considerable binary segmentation performance. Further, we integrate unary and pairwise potentials into the CRF model to refine the segmentation results. The pairwise potentials include color and texture potentials with neighborhood interactions, and an edge potential. High segmentation accuracy is demonstrated on three benchmark datasets: the Weizmann horse dataset, the VOC2006 cow dataset, and the MSRC multiclass dataset. Extensive experiments show that the proposed approach performs favorably against the state-of-the-art approaches.
基于crf的像素级稀疏编码和邻域交互图/地分割
在本文中,我们提出了一种结合特征袋和条件随机场(CRF)技术来学习图像/地面分割判别模型的新方法。我们主张使用图像补丁代替超像素作为基本处理单元。后者具有均匀的外观,并遵循物体边界,而图像补丁通常包含更多的判别信息(如局部图像结构)来区分其类别。我们使用像素级稀疏编码来表示图像补丁。利用所提出的特征表示,一元分类器获得了相当好的二值分割性能。此外,我们将一元电位和成对电位整合到CRF模型中,以改进分割结果。成对电位包括具有邻域相互作用的颜色和纹理电位,以及边缘电位。在Weizmann马数据集、VOC2006奶牛数据集和MSRC多类数据集三个基准数据集上证明了较高的分割精度。大量的实验表明,所提出的方法优于最先进的方法。
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