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M3S-NIR: Multi-modal Multi-scale Noise-Insensitive Ranking for RGB-T Saliency Detection

机译:M3S-NIR:RGB-T显着性检测的多模态多尺度噪声不敏感排名

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RGB-Thermal saliency detection is to use thermal infrared information to assist salient object detection with visible light information. Multi-Modal Multi-Scale Noise-Insensitive Ranking (M3S-NIR), is proposed for RGB-Thermal (RGB-T) saliency detection. Given spatially aligned RGB and thermal images, M3S-NIR first segments them together into a set of multi-scale superpixels. Second, it takes these superpixels as graph nodes and performs multi-modal multi-scale manifold ranking to achieve saliency calculation, in which the cross-modal and cross-scale collaborations are performed to integrate different kinds of information. Third, to handle noises and corruptions of ranking seeds (i.e., boundary superpixels) introduced by salient objects and RGB-T alignment, M3S-NIR introduces an intermediate variable to infer the optimal ranking seeds, and formulates it as a sparse learning problem. Finally, M3S-NIR uses a unified ADMM (Alternating Direction Method of Multipliers)-based optimization framework to solve the ranking model efficiently. Extensive experiments on the benchmark dataset demonstrate the effectiveness of the proposed approach over other state-of-the-art RGB-T saliency detection methods.
机译:RGB-热敏度检测是使用热红外信息来帮助突出的物体检测,具有可见光信息。提出了用于RGB-Thermal(RGB-T)显着性检测的多模态多尺度噪声不敏感等级(M3S-NIR)。给定空间对齐的RGB和热图像,M3S-NIR首先将它们分成一组多尺寸超像素。其次,它将这些超像素作为曲线节点,并且执行多模态多尺度歧管排名以实现显着计算,其中执行跨模型和跨比协作以集成不同类型的信息。第三,为了处理由突出对象和RGB-T对准引入的排名种子(即,边界超像素)的噪声和损坏,M3S-NIR引入了中间变量来推断出最佳排名种子,并将其作为稀疏学习问题。最后,M3S-NIR使用统一的ADMM(交替方向方法)基于优化框架来有效地解决排名模型。基准数据集的广泛实验证明了所提出的方法在其他最先进的RGB-T显着性检测方法的有效性。

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