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Papers/ExpoMamba: Exploiting Frequency SSM Blocks for Efficient a...

ExpoMamba: Exploiting Frequency SSM Blocks for Efficient and Effective Image Enhancement

Eashan Adhikarla, Kai Zhang, John Nicholson, Brian D. Davison

2024-08-19Image EnhancementLow-Light Image Enhancement
PaperPDFCode(official)

Abstract

Low-light image enhancement remains a challenging task in computer vision, with existing state-of-the-art models often limited by hardware constraints and computational inefficiencies, particularly in handling high-resolution images. Recent foundation models, such as transformers and diffusion models, despite their efficacy in various domains, are limited in use on edge devices due to their computational complexity and slow inference times. We introduce ExpoMamba, a novel architecture that integrates components of the frequency state space within a modified U-Net, offering a blend of efficiency and effectiveness. This model is specifically optimized to address mixed exposure challenges, a common issue in low-light image enhancement, while ensuring computational efficiency. Our experiments demonstrate that ExpoMamba enhances low-light images up to 2-3x faster than traditional models with an inference time of 36.6 ms and achieves a PSNR improvement of approximately 15-20% over competing models, making it highly suitable for real-time image processing applications.

Results

TaskDatasetMetricValueModel
Image EnhancementLOLAverage PSNR25.77ExpoMamba
Image EnhancementLOLLPIPS0.212ExpoMamba
Image EnhancementLOLSSIM0.86ExpoMamba
Image EnhancementLOLv2Average PSNR28.04ExpoMamba
Image EnhancementLOLv2LPIPS0.203ExpoMamba
Image EnhancementLOLv2SSIM0.868ExpoMamba

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