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Visual Saliency Map from Tensor Analysis

机译:张量分析的视觉显着性图

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摘要

Modeling visual saliency map of an image provides important information for image semantic understanding in many applications. Most existing computational visual saliency models follow a bottom-up framework that generates independent saliency map in each selected visual feature space and combines them in a proper way. Two big challenges to be addressed explicitly in these methods are (1) which features should be extracted for all pixels of the input image and (2) how to dynamically determine importance of the saliency map generated in each feature space. In order to address these problems, we present a novel saliency map computational model based on tensor decomposition and reconstruction. Tensor representation and analysis not only explicitly represent image's color values but also imply two important relationships inherent to color image. One is reflecting spatial correlations between pixels and the other one is representing interplay between color channels. Therefore, saliency map generator based on the proposed model can adaptively find the most suitable features and their combinational coefficients for each pixel. Experiments on a synthetic image set and a real image set show that our method is superior or comparable to other prevailing saliency map models.
机译:图像的模型视觉显着图提供了许多应用中的图像语义理解的重要信息。大多数现有的计算视力效果遵循自下而上的框架,在每个所选视觉特征空间中生成独立的显着图,并以正确的方式组合它们。在这些方法中明确解决的两个大挑战是(1)应为输入图像的所有像素提取哪些特征,并且(2)如何动态地确定每个特征空间中生成的显着图的重要性。为了解决这些问题,我们提出了一种基于张量分解和重建的新型显着性图计算模型。张量表示和分析不仅明确表示图像的颜色值,还意味着两个重要的彩色图像所固有的重要关系。一个是反映像素之间的空间相关性,另一个是表示颜色信道之间的相互作用。因此,基于所提出的模型的显着图发生器可以自适应地找到每个像素的最合适的特征和它们组合系数。在合成图像集和真实图像集上的实验表明我们的方法是优越的或与其他主要显着性图模型的相当。

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