
arXiv: 1901.01415
handle: 20.500.11850/342096
This work addresses the problem of semantic scene understanding under fog. Although marked progress has been made in semantic scene understanding, it is mainly concentrated on clear-weather scenes. Extending semantic segmentation methods to adverse weather conditions such as fog is crucial for outdoor applications. In this paper, we propose a novel method, named Curriculum Model Adaptation (CMAda), which gradually adapts a semantic segmentation model from light synthetic fog to dense real fog in multiple steps, using both labeled synthetic foggy data and unlabeled real foggy data. The method is based on the fact that the results of semantic segmentation in moderately adverse conditions (light fog) can be bootstrapped to solve the same problem in highly adverse conditions (dense fog). CMAda is extensible to other adverse conditions and provides a new paradigm for learning with synthetic data and unlabeled real data. In addition, we present three other main stand-alone contributions: 1) a novel method to add synthetic fog to real, clear-weather scenes using semantic input; 2) a new fog density estimator; 3) a novel fog densification method to densify the fog in real foggy scenes without using depth; and 4) the Foggy Zurich dataset comprising 3808 real foggy images, with pixel-level semantic annotations for 40 images under dense fog. Our experiments show that 1) our fog simulation and fog density estimator outperform their state-of-the-art counterparts with respect to the task of semantic foggy scene understanding (SFSU); 2) CMAda improves the performance of state-of-the-art models for SFSU significantly, benefiting both from our synthetic and real foggy data. The datasets and code are available at the project website.
accepted by IJCV (22 pages), an extension of arXiv:1808.01265 our eccv18 paper
FOS: Computer and information sciences, Technology, Science & Technology, Computer Vision and Pattern Recognition (cs.CV), Computer Science - Computer Vision and Pattern Recognition, Network distillation, Semantic foggy scene understanding, Fog simulation, PSI_VISICS, 4607 Graphics, augmented reality and games, Learning with synthetic and real data, Computer Science, Artificial Intelligence, Curriculum model adaptation, CONTRAST RESTORATION, 4603 Computer vision and multimedia computation, Adverse weather conditions, VISION, 4611 Machine learning, Computer Science, 0801 Artificial Intelligence and Image Processing, Artificial Intelligence & Image Processing, PSI_4547
FOS: Computer and information sciences, Technology, Science & Technology, Computer Vision and Pattern Recognition (cs.CV), Computer Science - Computer Vision and Pattern Recognition, Network distillation, Semantic foggy scene understanding, Fog simulation, PSI_VISICS, 4607 Graphics, augmented reality and games, Learning with synthetic and real data, Computer Science, Artificial Intelligence, Curriculum model adaptation, CONTRAST RESTORATION, 4603 Computer vision and multimedia computation, Adverse weather conditions, VISION, 4611 Machine learning, Computer Science, 0801 Artificial Intelligence and Image Processing, Artificial Intelligence & Image Processing, PSI_4547
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