Saved in:
Bibliographic Details
Main Authors: Adhikarla, Eashan, Zhang, Kai, VidalMata, Rosaura G., Aithal, Manjushree, Madhusudhana, Nikhil Ambha, Nicholson, John, Sun, Lichao, Davison, Brian D.
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.13170
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866912846831419392
author Adhikarla, Eashan
Zhang, Kai
VidalMata, Rosaura G.
Aithal, Manjushree
Madhusudhana, Nikhil Ambha
Nicholson, John
Sun, Lichao
Davison, Brian D.
author_facet Adhikarla, Eashan
Zhang, Kai
VidalMata, Rosaura G.
Aithal, Manjushree
Madhusudhana, Nikhil Ambha
Nicholson, John
Sun, Lichao
Davison, Brian D.
contents Despite recent strides made by AI in image processing, the issue of mixed exposure, pivotal in many real-world scenarios like surveillance and photography, remains inadequately addressed. Traditional image enhancement techniques and current transformer models are limited with primary focus on either overexposure or underexposure. To bridge this gap, we introduce the Unified-Exposure Guided Transformer (Unified-EGformer). Our proposed solution is built upon advanced transformer architectures, equipped with local pixel-level refinement and global refinement blocks for color correction and image-wide adjustments. We employ a guided attention mechanism to precisely identify exposure-compromised regions, ensuring its adaptability across various real-world conditions. U-EGformer, with a lightweight design featuring a memory footprint (peak memory) of only $\sim$1134 MB (0.1 Million parameters) and an inference time of 95 ms (9.61x faster than the average), is a viable choice for real-time applications such as surveillance and autonomous navigation. Additionally, our model is highly generalizable, requiring minimal fine-tuning to handle multiple tasks and datasets with a single architecture.
format Preprint
id arxiv_https___arxiv_org_abs_2407_13170
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Unified-EGformer: Exposure Guided Lightweight Transformer for Mixed-Exposure Image Enhancement
Adhikarla, Eashan
Zhang, Kai
VidalMata, Rosaura G.
Aithal, Manjushree
Madhusudhana, Nikhil Ambha
Nicholson, John
Sun, Lichao
Davison, Brian D.
Computer Vision and Pattern Recognition
Artificial Intelligence
Despite recent strides made by AI in image processing, the issue of mixed exposure, pivotal in many real-world scenarios like surveillance and photography, remains inadequately addressed. Traditional image enhancement techniques and current transformer models are limited with primary focus on either overexposure or underexposure. To bridge this gap, we introduce the Unified-Exposure Guided Transformer (Unified-EGformer). Our proposed solution is built upon advanced transformer architectures, equipped with local pixel-level refinement and global refinement blocks for color correction and image-wide adjustments. We employ a guided attention mechanism to precisely identify exposure-compromised regions, ensuring its adaptability across various real-world conditions. U-EGformer, with a lightweight design featuring a memory footprint (peak memory) of only $\sim$1134 MB (0.1 Million parameters) and an inference time of 95 ms (9.61x faster than the average), is a viable choice for real-time applications such as surveillance and autonomous navigation. Additionally, our model is highly generalizable, requiring minimal fine-tuning to handle multiple tasks and datasets with a single architecture.
title Unified-EGformer: Exposure Guided Lightweight Transformer for Mixed-Exposure Image Enhancement
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2407.13170