Authors
Deng-Ping Fan, Ming-Ming Cheng*, Yun Liu, Tao Li, Ali Borji
Publication date
2017
Conference
International Conference on Computer Vision (ICCV, Spotlight)
Description
Foreground map evaluation is crucial for gauging the progress of object segmentation algorithms, in particular in the filed of salient object detection where the purpose is to accurately detect and segment the most salient object in a scene. Several widely-used measures such as Area Under the Curve (AUC), Average Precision (AP) and the recently proposed Fbw have been utilized to evaluate the similarity between a non-binary saliency map (SM) and a ground-truth (GT) map. These measures are based on pixel-wise errors and often ignore the structural similarities. Behavioral vision studies, however, have shown that the human visual system is highly sensitive to structures in scenes. Here, we propose a novel, efficient, and easy to calculate measure known an structural similarity measure (Structure-measure) to evaluate non-binary foreground maps. Our new measure simultaneously evaluates region-aware and object-aware structural similarity between a SM and a GT map. We demonstrate superiority of our measure over existing ones using 5 meta-measures on 5 benchmark datasets.
Total citations
20182019202020212022202320242269167236331430278
Scholar articles
DP Fan, MM Cheng, Y Liu, T Li, A Borji - Proceedings of the IEEE international conference on …, 2017
MM Cheng, DP Fan - International Journal of Computer Vision, 2021