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Image Co-segmentation via Saliency Co-fusion

机译:通过显着共融合进行图像共分割

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摘要

Most existing high-performance co-segmentation algorithms are usually complex due to the way of co-labeling a set of images as well as the common need of fine-tuning few parameters for effective co-segmentation. In this paper, instead of following the conventional way of co-labeling multiple images, we propose to first exploit inter-image information through co-saliency, and then perform single-image segmentation on each individual image. To make the system robust and to avoid heavy dependence on one single saliency extraction method, we propose to apply multiple existing saliency extraction methods on each image to obtain diverse salient maps. Our major contribution lies in the proposed method that fuses the obtained diverse saliency maps by exploiting the inter-image information, which we call saliency co-fusion. Experiments on five benchmark datasets with eight saliency extraction methods show that our saliency co-fusion-based approach achieves competitive performance even without parameter fine-tuning when compared with the state-of-the-art methods.
机译:由于共同标记一组图像的方式以及微调一些参数以有效进行共同分割的共同需求,大多数现有的高性能共同分割算法通常很复杂。在本文中,我们建议先通过共同显着性利用图像间信息,然后对每个单独的图像执行单图像分割,而不是遵循共同标记多个图像的常规方法。为了使系统健壮并避免严重依赖一种单一的显着性提取方法,我们建议在每个图像上应用多种现有的显着性提取方法以获得不同的显着图。我们的主要贡献在于所提出的方法,该方法通过利用图像间信息来融合获得的各种显着性图,我们将其称为显着性共融合。对使用八种显着性提取方法的五个基准数据集进行的实验表明,与最新方法相比,即使不进行参数微调,我们基于显着性共融合的方法也可以实现竞争性能。

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