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Taking a Deeper Look at Co-Salient Object Detection

机译:深入了解共凸目标检测

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Co-salient object detection (CoSOD) is a newly emerging and rapidly growing branch of salient object detection (SOD), which aims to detect the co-occurring salient objects in multiple images. However, existing CoSOD datasets often have a serious data bias, which assumes that each group of images contains salient objects of similar visual appearances. This bias results in the ideal settings and the effectiveness of the models, trained on existing datasets, may be impaired in real-life situations, where the similarity is usually semantic or conceptual. To tackle this issue, we first collect a new high-quality dataset, named CoSOD3k, which contains 3,316 images divided into 160 groups with multiple level annotations, i.e., category, bounding box, object, and instance levels. CoSOD3k makes a significant leap in terms of diversity, difficulty and scalability, benefiting related vision tasks. Besides, we comprehensively summarize 34 cutting-edge algorithms, benchmarking 19 of them over four existing CoSOD datasets (MSRC, iCoSeg, Image Pair and CoSal2015) and our CoSOD3k with a total of ∼61K images (largest scale), and reporting group-level performance analysis. Finally, we discuss the challenge and future work of CoSOD. Our study would give a strong boost to growth in the CoSOD community. Benchmark toolbox and results are available on our project page.
机译:共凸目标检测(CoSOD)是凸显目标检测(SOD)的一个新兴且增长迅速的分支,旨在检测多幅图像中共现的凸显对象。但是,现有的CoSOD数据集通常存在严重的数据偏差,它假定每组图像都包含具有相似视觉外观的显着对象。这种偏差会导致理想的设置,而在现有数据集上训练的模型的有效性可能会在现实情况下受到损害,在现实情况下,相似性通常是语义上或概念上的。为了解决这个问题,我们首先收集一个名为CoSOD3k的高质量新数据集,其中包含3,316张图像,分为160个组,具有多个级别注释,即类别,边界框,对象和实例级别。 CoSOD3k在多样性,难度和可扩展性方面取得了重大飞跃,使相关的视觉任务受益。此外,我们全面总结了34种最先进的算法,在四个现有CoSOD数据集(MSRC,iCoSeg,Image Pair和CoSal2015)和我们的CoSOD3k中对其中的19种进行了基准测试,总共有约61K张图像(最大规模),并报告了集团级别性能分析。最后,我们讨论了CoSOD的挑战和未来的工作。我们的研究将极大地促进CoSOD社区的增长。基准工具箱和结果可在我们的项目页面上找到。

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