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Papers/MST++: Multi-stage Spectral-wise Transformer for Efficient...

MST++: Multi-stage Spectral-wise Transformer for Efficient Spectral Reconstruction

Yuanhao Cai, Jing Lin, Zudi Lin, Haoqian Wang, Yulun Zhang, Hanspeter Pfister, Radu Timofte, Luc van Gool

2022-04-17Spectral ReconstructionImage Restoration
PaperPDFCodeCodeCode(official)

Abstract

Existing leading methods for spectral reconstruction (SR) focus on designing deeper or wider convolutional neural networks (CNNs) to learn the end-to-end mapping from the RGB image to its hyperspectral image (HSI). These CNN-based methods achieve impressive restoration performance while showing limitations in capturing the long-range dependencies and self-similarity prior. To cope with this problem, we propose a novel Transformer-based method, Multi-stage Spectral-wise Transformer (MST++), for efficient spectral reconstruction. In particular, we employ Spectral-wise Multi-head Self-attention (S-MSA) that is based on the HSI spatially sparse while spectrally self-similar nature to compose the basic unit, Spectral-wise Attention Block (SAB). Then SABs build up Single-stage Spectral-wise Transformer (SST) that exploits a U-shaped structure to extract multi-resolution contextual information. Finally, our MST++, cascaded by several SSTs, progressively improves the reconstruction quality from coarse to fine. Comprehensive experiments show that our MST++ significantly outperforms other state-of-the-art methods. In the NTIRE 2022 Spectral Reconstruction Challenge, our approach won the First place. Code and pre-trained models are publicly available at https://github.com/caiyuanhao1998/MST-plus-plus.

Results

TaskDatasetMetricValueModel
Image RestorationKAISTPSNR35.99MST++
Image RestorationKAISTSSIM0.951MST++
Image RestorationCAVEPSNR35.99MST++
Image RestorationCAVESSIM0.951MST++
Image RestorationReal HSIUser Study Score13MST++
Image RestorationARAD-1KMRAE0.1645MST++
Image RestorationARAD-1KPSNR34.32MST++
Image RestorationARAD-1KRMSE0.0248MST++
10-shot image generationKAISTPSNR35.99MST++
10-shot image generationKAISTSSIM0.951MST++
10-shot image generationCAVEPSNR35.99MST++
10-shot image generationCAVESSIM0.951MST++
10-shot image generationReal HSIUser Study Score13MST++
10-shot image generationARAD-1KMRAE0.1645MST++
10-shot image generationARAD-1KPSNR34.32MST++
10-shot image generationARAD-1KRMSE0.0248MST++

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