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Feature selection based saliency object detection

机译:基于特征选择的显着性对象检测

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Color is essential feature in computer vision, to find a distinct color representation of the foreground and background is difficult. In this paper, we propose a novel method to pursue color features which are distinguishable for foreground and background. To achieve the initial position of the foreground, we impose the bi-segmentation mask of saliency map. However, single saliency map could not ensure the quality of the initialization. Such that we use the mask of the bi-segment the average of different saliency maps as initial seed. The distinct color features are selected by our feature selection method based on the foreground and background mask. Then we build a graph on the super-pixel segmentation, and the affinity matrix is computed based on the combined features. The new features endow higher similarity to the edges in the foreground (or background), but endow lower similarity to the edges across the foreground and background. Then we impose manifold ranking method to compute the final saliency maps. Our systematical experimental evaluations show that the proposed method can produce competitive results in comparison to the state-of-the-art.
机译:颜色是计算机视觉中必不可少的功能,很难找到前景和背景的鲜明颜色表示。在本文中,我们提出了一种新颖的方法来追求可区分前景和背景的色彩特征。为了达到前景的初始位置,我们设置了显着图的双分割蒙版。但是,单个显着性图不能确保初始化的质量。这样,我们就使用双分割的掩码将不同显着性图的平均值作为初始种子。通过我们基于前景和背景蒙版的特征选择方法选择不同的颜色特征。然后,我们在超像素分割上构建图,并基于组合特征计算亲和力矩阵。新功能赋予与前景(或背景)边缘较高的相似度,但赋予与前景和背景边缘的较低相似度。然后,我们采用流形排序方法来计算最终的显着性图。我们的系统实验评估表明,与最新技术相比,该方法可以产生有竞争力的结果。

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