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Delving into Crispness: Guided Label Refinement for Crisp Edge Detection

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Learning-based edge detection usually suffers from predicting thick edges. Through extensive quantitative study with a new edge crispness measure, we find that noisy human-labeled edges are the main cause of thick predictions. Based on this observation, we advocate that more attention should be paid on label quality than on model design to achieve crisp edge detection. To this end, we propose an effective Canny-guided refinement of human-labeled edges whose result can be used to train crisp edge detectors. Essentially, it seeks for a subset of over-detected Canny edges that best align human labels. We show that several existing edge detectors can be turned into a crisp edge detector through training on our refined edge maps. Experiments demonstrate that deep models trained with refined edges achieve significant performance boost of crispness from 17.4% to 30.6%. With the PiDiNet backbone, our method improves ODS and OIS by 12.2% and 12.6% on the Multicue dataset, respectively, without relying on non-maximal suppression. We further conduct experiments and show the superiority of our crisp edge detection for optical flow estimation and image segmentation.

Yunfan Ye, Renjiao Yi, Zhirui Gao, Zhiping Cai, Kai Xu• 2023

Related benchmarks

TaskDatasetResultRank
Crisp Edge DetectionBSDS
AC Score42.4
5
Crisp Edge DetectionMulti-Cue
AC Score0.424
5
Crisp Edge DetectionBIPED
AC Score0.512
5
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