This letter proposes a novel framework to detect common salient objects in a group of images automatically and efficiently. Different from most existing co-saliency models which directly redesign algorithms for multiple images, the saliency model for a single image is fully exploited under the proposed framework to guide the co-saliency detection. Given single image saliency maps, a two-stage guided detection pipeline led by queries is proposed to obtain the guided saliency maps of the image set through a ranking scheme. Then the guided saliency maps generated by different queries are fused in a way that takes advantages of both averaging and multiplication. The proposed model makes existing saliency models work well in co-saliency scenarios. Experimental results on two benchmark databases demonstrate that the proposed framework outperforms the state-of-the-art models in terms of both accuracy and efficiency.
Bailin YangFrederick W. B. LiXun WangMingliang XuXiaohui LiangZhaoyi JiangYanhui Jiang
Simone PalazzoFrancesco RundoSebastiano BattiatoDaniela GiordanoConcetto Spampinato
Kussay N. MutterZubir Mat JafriAzlan Abdul Aziz
Junfeng WuHong YuJianwei SunWenyu QuZhen Cui
Erik de Godoy PerilloEsther Luna Colombini