Gaussian mixture background for salient object detection

Z. Su, Hong Zheng, Guorui Song
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引用次数: 2

Abstract

Salient object detection has become a valuable tool in image processing. In this paper, we propose a novel approach to get full-resolution saliency maps. The input image is segmented into superpixels, each of them presents an irregular but homogenous area of the image thus can be treated as an image unit. Intuitively, superpixels touching the image borders will have the potential to capture the background information. Therefore, pixels belong to those superpixels are collected as background samples to train a Gaussian mixture model. The saliency of each superpixel is then defined by computing the weighted probability density of the Gaussian mixture model followed by an enhancement and smoothness step. At the end, a dense conditional random field based refinement tool or cellular automata is selected by an adaptive threshold to remove the false salient regions or find other potential saliency regions to get a more accurate result in pixel-level. We compare our method to five saliency detection algorithms which are classic or similar to ours but published in recent years on a commonly used challenging dataset ECSSD. Experiments show that our approach outperforms others well.
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高斯混合背景显著目标检测
显著目标检测已成为图像处理的重要工具。本文提出了一种获得全分辨率显著性图的新方法。输入图像被分割成多个超像素,每个超像素代表图像的一个不规则但均匀的区域,因此可以作为一个图像单元。直观地说,接触图像边界的超像素将有可能捕获背景信息。因此,收集属于这些超像素的像素作为背景样本来训练高斯混合模型。然后通过计算高斯混合模型的加权概率密度来定义每个超像素的显著性,然后进行增强和平滑步骤。最后,通过自适应阈值选择基于密集条件随机场的细化工具或元胞自动机,去除虚假显著区域或寻找其他潜在显著区域,在像素级上得到更准确的结果。我们将我们的方法与五种显著性检测算法进行比较,这些算法是经典的或与我们的算法相似的,但近年来发表在一个常用的具有挑战性的数据集ECSSD上。实验表明,我们的方法优于其他方法。
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