基于颜色空间方差加权图模型的显著性检测

Xiaoyun Yan, Yuehuang Wang, Mengmeng Song, Man Jiang
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引用次数: 0

摘要

显著性检测是近年来计算机视觉研究的一个活跃领域,在模式识别、图像检索、自适应压缩、目标检测等方面有着广泛的应用。本文提出了一种基于颜色空间方差加权图模型的显著性检测方法,该方法的设计依赖于背景先验。首先将原始图像分割成小块,然后在小块上使用mean-shift聚类算法得到代表整幅图像主要颜色的各种聚类中心。在建模阶段,将所有的patch和聚类中心表示为特定图模型上的节点。每个patch的显著性定义为从patch到所有聚类中心的最短路径上的权值的加权和,每个最短路径根据颜色空间方差进行加权。当我们在流行的MSRA1000数据库上进行评估时,我们的显著性检测方法计算效率高,并且以更高的精度和更好的召回率优于当前的方法。
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Saliency Detection Using Color Spatial Variance Weighted Graph Model
Saliency detection as a recently active research field of computer vision, has a wide range of applications, such as pattern recognition, image retrieval, adaptive compression, target detection, etc. In this paper, we propose a saliency detection method based on color spatial variance weighted graph model, which is designed rely on a background prior. First, the original image is partitioned into small patches, then we use mean-shift clustering algorithm on this patches to get sorts of clustering centers that represents the main colors of whole image. In modeling stage, all patches and the clustering centers are denoted as nodes on a specific graph model. The saliency of each patch is defined as weighted sum of weights on shortest paths from the patch to all clustering centers, each shortest path is weighted according to color spatial variance. Our saliency detection method is computational efficient and outperformed the state of art methods by higher precision and better recall rates, when we took evaluation on the popular MSRA1000 database.
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