CMAWRNet: Multiple Adverse Weather Removal via a Unified Quaternion Neural Architecture
Vladimir Frants, Sos Agaian, and Karen Panetta, Peter Huang

TL;DR
CMAWRNet is a novel quaternion neural network that effectively removes multiple adverse weather conditions from images, improving robustness and downstream application performance.
Contribution
It introduces a unified quaternion architecture with texture-structure decomposition, a lightweight transformer, and a new loss function for multi-weather removal.
Findings
Outperforms state-of-the-art methods on benchmark datasets.
Enhances object detection in adverse weather conditions.
Demonstrates effectiveness on real-world images.
Abstract
Images used in real-world applications such as image or video retrieval, outdoor surveillance, and autonomous driving suffer from poor weather conditions. When designing robust computer vision systems, removing adverse weather such as haze, rain, and snow is a significant problem. Recently, deep-learning methods offered a solution for a single type of degradation. Current state-of-the-art universal methods struggle with combinations of degradations, such as haze and rain-streak. Few algorithms have been developed that perform well when presented with images containing multiple adverse weather conditions. This work focuses on developing an efficient solution for multiple adverse weather removal using a unified quaternion neural architecture called CMAWRNet. It is based on a novel texture-structure decomposition block, a novel lightweight encoder-decoder quaternion transformer…
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Taxonomy
TopicsPrecipitation Measurement and Analysis
