Title :
Co-Salient Object Detection From Multiple Images
Author :
Hongliang Li ; Fanman Meng ; King Ngi Ngan
Author_Institution :
Sch. of Electron. Eng., Univ. of Electron. Sci. & Technol. of China, Chengdu, China
Abstract :
In this paper, we propose a novel method to discover co-salient objects from a group of images, which is modeled as a linear fusion of an intra-image saliency (IaIS) map and an inter-image saliency (IrIS) map. The first term is to measure the salient objects from each image using multiscale segmentation voting. The second term is designed to detect the co-salient objects from a group of images. To compute the IrIS map, we perform the pairwise similarity ranking based on an image pyramid representation. A minimum spanning tree is then constructed to determine the image matching order. For each region in an image, we design three types of visual descriptors, which are extracted from the local appearance, e.g., color, color co-occurrence and shape properties. The final region matching problem between the images is formulated as an assignment problem that can be optimized by linear programming. Experimental evaluation on a number of images demonstrates the good performance of the proposed method on co-salient object detection.
Keywords :
feature extraction; image fusion; image matching; image representation; image segmentation; linear programming; object detection; trees (mathematics); IaIS map; IrIS map; assignment problem; co-salient object detection; feature extraction; final region matching problem; image matching order; image pyramid representation; inter-image saliency map; intra-image saliency map; linear fusion; linear programming; local appearance; minimum spanning tree; multiscale segmentation voting; pairwise similarity ranking; visual descriptors; Attention model; co-saliency; minimum spanning tree; similarity;
Journal_Title :
Multimedia, IEEE Transactions on
DOI :
10.1109/TMM.2013.2271476