Visual saliency detection based on modeling the spatial Gaussianity

H. Ju
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Abstract

In this paper, a novel salient object detection method based on modeling the spatial anomalies is presented. The proposed framework is inspired by the biological mechanism that human eyes are sensitive to the unusual and anomalous objects among complex background. It is supposed that a natural image can be seen as a combination of some similar or dissimilar basic patches, and there is a direct relationship between its saliency and anomaly. Some patches share high degree of similarity and have a vast number of quantity. They usually make up the background of an image. On the other hand, some patches present strong rarity and specificity. We name these patches “anomalies”. Generally, anomalous patch is a reflection of the edge or some special colors and textures in an image, and these pattern cannot be well “explained” by their surroundings. Human eyes show great interests in these anomalous patterns, and will automatically pick out the anomalous parts of an image as the salient regions. To better evaluate the anomaly degree of the basic patches and exploit their nonlinear statistical characteristics, a multivariate Gaussian distribution saliency evaluation model is proposed. In this way, objects with anomalous patterns usually appear as the outliers in the Gaussian distribution, and we identify these anomalous objects as salient ones. Experiments are conducted on the well-known MSRA saliency detection dataset. Compared with other recent developed visual saliency detection methods, our method suggests significant advantages.
基于空间高斯性建模的视觉显著性检测
本文提出了一种基于空间异常建模的显著目标检测方法。该框架的灵感来自于人眼对复杂背景下的异常物体敏感的生物学机制。自然图像可以看作是一些相似或不相似的基本斑块的组合,其显著性与异常之间存在直接关系。有些斑块相似度高,数量多。它们通常构成图像的背景。另一方面,一些斑块表现出强烈的罕见性和特异性。我们称这些斑块为“异常”。一般来说,异常斑块是图像中边缘或某些特殊颜色和纹理的反射,这些图案不能被周围环境很好地“解释”。人眼对这些异常模式表现出极大的兴趣,并会自动挑选出图像的异常部分作为显著区域。为了更好地评价基本斑块的异常程度和利用其非线性统计特性,提出了一种多元高斯分布显著性评价模型。这样,具有异常模式的目标通常作为高斯分布中的异常点出现,我们将这些异常目标识别为显著点。在著名的MSRA显著性检测数据集上进行了实验。与近年来发展起来的其他视觉显著性检测方法相比,我们的方法具有明显的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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