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Learning to detect salient region of image under weak supervision

机译:学习在弱监督下检测图像的显着区域

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Salient region of an image usually contains the crucial information for image analysis and understanding. Most conventional approaches learn the saliency by utilizing the low-level features, which ignore the participation of human. In this paper, we propose an effective and robust approach to detect the salient region of an image by combining the bottom-up and top-down cues. The proposed method not only consider the low-level attention features, but also take human into the loop for better understanding of human attention. Furthermore, we build an asymmetrical graph model to integrate these bottom-up and top-down cues into an energy function of saliency. A compact but exact saliency region can be obtained by minimizing posterior energy function. The compact constraint and global minimization manner of the asymmetrical graph cuts guarantee the good performance of saliency extraction. Extensive experiments demonstrate the proposed method is promising.
机译:图像的显着区域通常包含用于图像分析和理解的关键信息。大多数常规方法都是通过利用低级功能来学习显着性,这些低级功能忽略了人类的参与。在本文中,我们提出了一种有效且鲁棒的方法,通过结合自下而上和自上而下的提示来检测图像的显着区域。所提出的方法不仅考虑了低层次的注意力特征,而且将人类带入了循环,以更好地理解人类的注意力。此外,我们建立了一个不对称图模型,将这些自下而上和自上而下的线索整合到显着性的能量函数中。可以通过最小化后方能量函数来获得紧凑而精确的显着区域。非对称图割的紧约束和全局最小化方式保证了显着性提取的良好性能。大量实验表明,该方法是有前途的。

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