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Co-saliency detection via looking deep and wide

机译:通过深入了解而发现共显性

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With the goal of effectively identifying common and salient objects in a group of relevant images, co-saliency detection has become essential for many applications such as video foreground extraction, surveillance, image retrieval, and image annotation. In this paper, we propose a unified co-saliency detection framework by introducing two novel insights: 1) looking deep to transfer higher-level representations by using the convolutional neural network with additional adaptive layers could better reflect the properties of the co-salient objects, especially their consistency among the image group; 2) looking wide to take advantage of the visually similar neighbors beyond a certain image group could effectively suppress the influence of the common background regions when formulating the intra-group consistency. In the proposed framework, the wide and deep information are explored for the object proposal windows extracted in each image, and the co-saliency scores are calculated by integrating the intra-image contrast and intra-group consistency via a principled Bayesian formulation. Finally the window-level co-saliency scores are converted to the superpixel-level co-saliency maps through a foreground region agreement strategy. Comprehensive experiments on two benchmark datasets have demonstrated the consistent performance gain of the proposed approach.
机译:为了有效识别一组相关图像中的常见对象和显着对象,共显着性检测对于许多应用(例如视频前景提取,监视,图像检索和图像注释)已变得至关重要。在本文中,我们通过引入两个新颖的见解来提出一个统一的共显着性检测框架:1)深入研究以使用带有附加自适应层的卷积神经网络来传输更高级别的表示,可以更好地反映共显着对象的属性,尤其是图像组之间的一致性; 2)在制定组内一致性时,张大眼睛以利用视觉上相似的邻居而不是某个图像组可以有效地抑制公共背景区域的影响。在提出的框架中,针对每个图像中提取的对象建议窗口探索了广泛而深入的信息,并通过原则上的贝叶斯公式整合了图像内对比度和组内一致性来计算共显着性得分。最终,通过前景区域协议策略将窗口级别的共显着性得分转换为超像素级别的共显着性图。在两个基准数据集上的综合实验表明,该方法具有一致的性能提升。

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