Knowledge Distillation for Image Restoration : Simultaneous Learning from Degraded and Clean Images
Journal:
arXiv
Published Date:
Jan 16, 2025
Abstract
Model compression through knowledge distillation has seen extensive
application in classification and segmentation tasks. However, its potential in
image-to-image translation, particularly in image restoration, remains
underexplored. To address this gap, we propose a Simultaneous Learning
Knowledge Distillation (SLKD) framework tailored for model compression in image
restoration tasks. SLKD employs a dual-teacher, single-student architecture
with two distinct learning strategies: Degradation Removal Learning (DRL) and
Image Reconstruction Learning (IRL), simultaneously. In DRL, the student
encoder learns from Teacher A to focus on removing degradation factors, guided
by a novel BRISQUE extractor. In IRL, the student decoder learns from Teacher B
to reconstruct clean images, with the assistance of a proposed PIQE extractor.
These strategies enable the student to learn from degraded and clean images
simultaneously, ensuring high-quality compression of image restoration models.
Experimental results across five datasets and three tasks demonstrate that SLKD
achieves substantial reductions in FLOPs and parameters, exceeding 80\%, while
maintaining strong image restoration performance.