Feature Fusion Attention Network with CycleGAN for Image Dehazing, De-Snowing and De-Raining
By: Akshat Jain
Potential Business Impact:
Clears foggy pictures, showing details hidden by haze.
This paper presents a novel approach to image dehazing by combining Feature Fusion Attention (FFA) networks with CycleGAN architecture. Our method leverages both supervised and unsupervised learning techniques to effectively remove haze from images while preserving crucial image details. The proposed hybrid architecture demonstrates significant improvements in image quality metrics, achieving superior PSNR and SSIM scores compared to traditional dehazing methods. Through extensive experimentation on the RESIDE and DenseHaze CVPR 2019 dataset, we show that our approach effectively handles both synthetic and real-world hazy images. CycleGAN handles the unpaired nature of hazy and clean images effectively, enabling the model to learn mappings even without paired data.
Similar Papers
Dual-Stage Global and Local Feature Framework for Image Dehazing
CV and Pattern Recognition
Clears fog from big, detailed pictures.
Learning Hazing to Dehazing: Towards Realistic Haze Generation for Real-World Image Dehazing
CV and Pattern Recognition
Clears foggy pictures faster and better.
Learning Unpaired Image Dehazing with Physics-based Rehazy Generation
CV and Pattern Recognition
Clears foggy pictures better, even real ones.