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Papers/CascadedGaze: Efficiency in Global Context Extraction for ...

CascadedGaze: Efficiency in Global Context Extraction for Image Restoration

Amirhosein Ghasemabadi, Muhammad Kamran Janjua, Mohammad Salameh, Chunhua Zhou, Fengyu Sun, Di Niu

2024-01-26DenoisingDeblurringImage DenoisingImage DeblurringImage Restoration
PaperPDFCode(official)

Abstract

Image restoration tasks traditionally rely on convolutional neural networks. However, given the local nature of the convolutional operator, they struggle to capture global information. The promise of attention mechanisms in Transformers is to circumvent this problem, but it comes at the cost of intensive computational overhead. Many recent studies in image restoration have focused on solving the challenge of balancing performance and computational cost via Transformer variants. In this paper, we present CascadedGaze Network (CGNet), an encoder-decoder architecture that employs Global Context Extractor (GCE), a novel and efficient way to capture global information for image restoration. The GCE module leverages small kernels across convolutional layers to learn global dependencies, without requiring self-attention. Extensive experimental results show that our computationally efficient approach performs competitively to a range of state-of-the-art methods on synthetic image denoising and single image deblurring tasks, and pushes the performance boundary further on the real image denoising task.

Results

TaskDatasetMetricValueModel
DenoisingSIDDPSNR (sRGB)40.39CGNet
DenoisingSIDDSSIM (sRGB)0.964CGNet
Image DenoisingSIDDPSNR (sRGB)40.39CGNet
Image DenoisingSIDDSSIM (sRGB)0.964CGNet
Image DeblurringGoProPSNR33.77CGNet
Image DeblurringGoProSSIM0.968CGNet
3D ArchitectureSIDDPSNR (sRGB)40.39CGNet
3D ArchitectureSIDDSSIM (sRGB)0.964CGNet
10-shot image generationGoProPSNR33.77CGNet
10-shot image generationGoProSSIM0.968CGNet
1 Image, 2*2 StitchiGoProPSNR33.77CGNet
1 Image, 2*2 StitchiGoProSSIM0.968CGNet
16kGoProPSNR33.77CGNet
16kGoProSSIM0.968CGNet

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