Rethinking Generative Methods for Image Restoration in Physics-based
Vision: A Theoretical Analysis from the Perspective of Information
- URL: http://arxiv.org/abs/2212.02198v2
- Date: Thu, 8 Dec 2022 11:02:35 GMT
- Title: Rethinking Generative Methods for Image Restoration in Physics-based
Vision: A Theoretical Analysis from the Perspective of Information
- Authors: Xudong Kang, Haoran Xie, Man-Leung Wong, and Jing Qin
- Abstract summary: End-to-end generative methods are considered a more promising solution for image restoration in physics-based vision.
However, existing generative methods still have plenty of room for improvement in quantitative performance.
In this study, we try to re-interpret these generative methods for image restoration tasks using information theory.
- Score: 19.530052941884996
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: End-to-end generative methods are considered a more promising solution for
image restoration in physics-based vision compared with the traditional
deconstructive methods based on handcrafted composition models. However,
existing generative methods still have plenty of room for improvement in
quantitative performance. More crucially, these methods are considered black
boxes due to weak interpretability and there is rarely a theory trying to
explain their mechanism and learning process. In this study, we try to
re-interpret these generative methods for image restoration tasks using
information theory. Different from conventional understanding, we analyzed the
information flow of these methods and identified three sources of information
(extracted high-level information, retained low-level information, and external
information that is absent from the source inputs) are involved and optimized
respectively in generating the restoration results. We further derived their
learning behaviors, optimization objectives, and the corresponding information
boundaries by extending the information bottleneck principle. Based on this
theoretic framework, we found that many existing generative methods tend to be
direct applications of the general models designed for conventional generation
tasks, which may suffer from problems including over-invested abstraction
processes, inherent details loss, and vanishing gradients or imbalance in
training. We analyzed these issues with both intuitive and theoretical
explanations and proved them with empirical evidence respectively. Ultimately,
we proposed general solutions or ideas to address the above issue and validated
these approaches with performance boosts on six datasets of three different
image restoration tasks.
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