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Visual Saliency by Keypoints Distribution Analysis

机译:通过关键点分布分析的视觉显着性

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In this paper we introduce a new method for Visual Saliency detection. The goal of our method is to emphasize regions that show rare visual aspects in comparison with those showing frequent ones. We propose a bottom up approach that performs a new technique based on low level image features (texture) analysis. More precisely, we use SIFT Density Maps (SDM), to study the distribution of keypoints into the image with different scales of observation, and its relationship with real fixation points. The hypothesis is that the image regions that show a larger distance from the mode (most frequent value) of the keypoints distribution over all the image are the same that better capture our visual attention. Results have been compared to two other low-level approaches and a supervised method.
机译:在本文中,我们介绍了一种用于视觉显着性检测的新方法。我们的方法的目的是强调与那些频繁出现的区域相比,显示出罕见的视觉区域的区域。我们提出了一种自下而上的方法,该方法基于低级图像特征(纹理)分析执行一种新技术。更准确地说,我们使用SIFT密度图(SDM)研究具有不同观察比例的关键点在图像中的分布以及其与真实注视点的关系。假设是,与所有图像上的关键点分布的模式(最频繁出现的值)相距较大的图像区域相同,可以更好地吸引我们的视觉注意力。将结果与其他两种低层方法和一种监督方法进行了比较。

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