Publication | Open Access
Improved Techniques for Learning to Dehaze and Beyond: A Collective Study
42
Citations
22
References
2018
Year
Artificial IntelligenceEngineeringMachine LearningSingle Image DehazingEducationCognitionCollective StudyLearning-by-doingSocial SciencesDeblurringImage AnalysisLearning PsychologyPattern RecognitionJust-in-time LearningVideo RestorationHuman LearningLearning ProblemCognitive ScienceMachine VisionObject DetectionDeep LearningImage EnhancementBenchmark DatasetComputer VisionLearning TheoryImage DenoisingImage Restoration
Here we explore two related but important tasks based on the recently released REalistic Single Image DEhazing (RESIDE) benchmark dataset: (i) single image dehazing as a low-level image restoration problem; and (ii) high-level visual understanding (e.g., object detection) of hazy images. For the first task, we investigated a variety of loss functions and show that perception-driven loss significantly improves dehazing performance. In the second task, we provide multiple solutions including using advanced modules in the dehazing-detection cascade and domain-adaptive object detectors. In both tasks, our proposed solutions significantly improve performance. GitHub repository URL is: https://github.com/guanlongzhao/dehaze
| Year | Citations | |
|---|---|---|
Page 1
Page 1