HCNet: Multi-Exposure High-Dynamic-Range Reconstruction Network for Coded Aperture Snapshot Spectral Imaging
Abstract
1. Introduction
2. Methods
2.1. Mathematical Model for Single- and Multi-Exposure CASSI
2.1.1. Single-Exposure CASSI
2.1.2. Multi-Exposure CASSI
2.1.3. CASSI Measurement Fusion and Hyperspectral Reconstruction Objectives
2.2. HDR CASSI Measurement Reconstruction
2.2.1. Fusion Module
2.2.2. Parallel Adaptive Channel-Spatial Fusion Attention (PAFCA)
2.2.3. Enhancement Module
2.2.4. Loss Function for HDR CASSI Measurement Estimation
3. Simulation Experiments
3.1. Experimental Setup
3.2. Evaluation of Multi-Exposure Strategies
3.2.1. Comparison of Single- and Multi-Exposure Strategies
3.2.2. Hyperspectral Reconstruction Performances with Different Exposure Intervals
3.3. Loss Functions for HDR CASSI Measurement Prediction
3.4. Ablation Experiments
3.5. Evaluation of Noise Robustness
4. Real-World Experiments
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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| Method | PSNR (dB) | -PSNR (dB) | SSIM | SAM | GFLOPs | Params (M) |
|---|---|---|---|---|---|---|
| LDR-Low | 24.583 | 19.124 | 0.789 | 19.145 | 20.105 | 1.379 |
| LDR-Mid | 15.291 | 19.393 | 0.635 | 14.113 | 20.105 | 1.379 |
| LDR-High | 8.466 | 12.902 | 0.181 | 18.352 | 20.105 | 1.379 |
| PFM | 33.901 | 27.741 | 0.930 | 9.893 | 21.917 | 1.425 |
| Cen-HDR | 36.753 | 29.021 | 0.953 | 8.754 | 24.958 | 1.582 |
| DRHDR | 37.472 | 33.397 | 0.964 | 6.915 | 86.711 | 2.567 |
| HDRFlow | 37.383 | 32.936 | 0.964 | 7.052 | 31.552 | 1.644 |
| SAFNet | 37.487 | 33.413 | 0.966 | 6.987 | 71.291 | 2.492 |
| Pred-HDR | 37.585 | 34.224 | 0.967 | 6.411 | 35.632 | 2.013 |
| GT-HDR | 37.734 | 34.513 | 0.969 | 6.185 | 20.105 | 1.379 |
| Method | Region 1 | Region 2 | Region 3 |
|---|---|---|---|
| LDR-Low | 18.99 (0.652) | 21.19 (0.668) | 16.21 (0.781) |
| LDR-Mid | 8.86 (0.552) | 11.89 (0.588) | 11.23 (0.361) |
| LDR-High | 2.57 (0.173) | 5.05 (0.153) | 7.64 (0.006) |
| PFM | 30.68 (0.858) | 30.91 (0.940) | 20.08 (0.718) |
| Cen-HDR | 35.31 (0.936) | 33.96 (0.969) | 31.26 (0.949) |
| DRHDR | 36.89 (0.955) | 35.49 (0.977) | 30.92 (0.950) |
| HDRFlow | 36.64 (0.952) | 35.01 (0.975) | 30.96 (0.947) |
| SAFNet | 37.27 (0.957) | 35.56 (0.977) | 31.01 (0.951) |
| Pred-HDR | 37.28 (0.957) | 35.57 (0.977) | 32.11 (0.958) |
| GT-HDR | 37.58 (0.961) | 36.42 (0.981) | 31.94 (0.958) |
| Loss Function | PSNR | -PSNR | SAM | SSIM |
|---|---|---|---|---|
| 36.68 | 33.19 | 8.85 | 0.961 | |
| 36.37 | 31.55 | 8.98 | 0.958 | |
| --law | 34.84 | 32.38 | 9.51 | 0.947 |
| PSNR | SSIM | -PSNR | SAM | GFLOPs | Params | ||
|---|---|---|---|---|---|---|---|
| 1 | Baseline | 36.15 | 0.954 | 31.57 | 9.21 | 15.15 | 0.942 |
| 2 | 1 + CA w GP | 36.35 | 0.957 | 32.36 | 9.02 | 23.01 | 1.423 |
| 3 | 1 + CA w AP | 36.51 | 0.959 | 32.89 | 8.99 | 23.09 | 1.425 |
| 4 | 1 + SA | 36.61 | 0.960 | 32.99 | 8.91 | 26.38 | 1.228 |
| 5 | 3 + 4 | 36.63 | 0.961 | 33.07 | 8.86 | 28.10 | 1.527 |
| 6 | 5 + Enhance | 36.68 | 0.961 | 33.19 | 8.81 | 30.68 | 1.573 |
| 7 | 6 + Sigmoid | 36.22 | 0.956 | 32.17 | 9.33 | 30.97 | 1.585 |
| 8 | 6 + Act | 36.18 | 0.955 | 31.85 | 9.55 | 31.08 | 1.601 |
| 9 | 7 + 8 | 36.27 | 0.955 | 32.35 | 9.54 | 31.38 | 1.616 |
| Method | PSNR | -PSNR | SAM | SSIM |
|---|---|---|---|---|
| LDR-Low (noise) | 21.51 | 16.08 | 16.03 | 0.578 |
| LDR-Mid (noise) | 12.14 | 14.58 | 18.01 | 0.483 |
| LDR-High (noise) | 8.75 | 13.51 | 18.35 | 0.241 |
| Pred-HDR (noise) | 33.44 | 30.98 | 9.36 | 0.926 |
| GT-HDR (noise) | 34.15 | 31.31 | 9.08 | 0.933 |
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Share and Cite
Shi, H.; Chen, J.; Li, Y.; Zhang, P.; Tian, J. HCNet: Multi-Exposure High-Dynamic-Range Reconstruction Network for Coded Aperture Snapshot Spectral Imaging. Sensors 2026, 26, 337. https://doi.org/10.3390/s26010337
Shi H, Chen J, Li Y, Zhang P, Tian J. HCNet: Multi-Exposure High-Dynamic-Range Reconstruction Network for Coded Aperture Snapshot Spectral Imaging. Sensors. 2026; 26(1):337. https://doi.org/10.3390/s26010337
Chicago/Turabian StyleShi, Hang, Jingxia Chen, Yahui Li, Pengwei Zhang, and Jinshou Tian. 2026. "HCNet: Multi-Exposure High-Dynamic-Range Reconstruction Network for Coded Aperture Snapshot Spectral Imaging" Sensors 26, no. 1: 337. https://doi.org/10.3390/s26010337
APA StyleShi, H., Chen, J., Li, Y., Zhang, P., & Tian, J. (2026). HCNet: Multi-Exposure High-Dynamic-Range Reconstruction Network for Coded Aperture Snapshot Spectral Imaging. Sensors, 26(1), 337. https://doi.org/10.3390/s26010337

