Journal of Graphics ›› 2026, Vol. 47 ›› Issue (3): 576-588.DOI: 10.11996/JG.j.2095-302X.2026030576
• Image Processing and Computer Vision • Previous Articles Next Articles
ZHANG Yi1, WANG Zhen2, LIU Yanli2(
), XING Guanyu3
Received:2025-10-27
Accepted:2026-02-12
Online:2026-06-30
Published:2026-06-30
Contact:
LIU Yanli
CLC Number:
ZHANG Yi, WANG Zhen, LIU Yanli, XING Guanyu. A progressive spatiotemporal detail enhancement algorithm for video dehazing[J]. Journal of Graphics, 2026, 47(3): 576-588.
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URL: http://www.txxb.com.cn/EN/10.11996/JG.j.2095-302X.2026030576
| 方法 | 年份 | 类型 | HazeWorld | REVIDE | ||
|---|---|---|---|---|---|---|
| PSNR/dB | SSIM | PSNR/dB | SSIM | |||
| DCP[ | 2011 | 图像去雾 | 16.49 | 0.812 6 | 11.03 | 0.728 5 |
| Griddehazenet[ | 2019 | 图像去雾 | 22.80 | 0.921 7 | 19.69 | 0.854 5 |
| FFA[ | 2020 | 图像去雾 | 22.11 | 0.900 7 | 16.65 | 0.813 3 |
| MSDBN[ | 2020 | 图像去雾 | 23.70 | 0.885 8 | 22.01 | 0.875 9 |
| Dehamer[ | 2022 | 图像去雾 | 22.92 | 0.904 4 | 19.43 | 0.700 8 |
| Dehazeformer[ | 2023 | 图像去雾 | 25.44 | 0.928 6 | 19.92 | 0.814 9 |
| DEA-Net[ | 2024 | 图像去雾 | 28.29 | 0.918 8 | 20.28 | 0.778 8 |
| VDH[ | 2018 | 视频去雾 | 17.97 | 0.778 0 | 16.64 | 0.813 3 |
| EDVR[ | 2019 | 视频去雾 | 22.91 | 0.903 6 | 21.22 | 0.870 7 |
| CG-IDN[ | 2021 | 视频去雾 | 25.25 | 0.915 5 | 23.21 | 0.883 6 |
| BasicVSR++[ | 2022 | 视频去雾 | 26.06 | 0.920 7 | 21.68 | 0.872 6 |
| MAP-Net[ | 2023 | 视频去雾 | 27.12 | 0.934 9 | 24.03 | 0.892 7 |
| DVD-Net[ | 2024 | 视频去雾 | 28.33 | 0.935 6 | 24.34 | 0.892 1 |
| PSTD-net | — | 视频去雾 | 28.66 | 0.938 7 | 23.65 | 0.896 7 |
Table 1 Quantitative results on HazeWorld and REVIDE
| 方法 | 年份 | 类型 | HazeWorld | REVIDE | ||
|---|---|---|---|---|---|---|
| PSNR/dB | SSIM | PSNR/dB | SSIM | |||
| DCP[ | 2011 | 图像去雾 | 16.49 | 0.812 6 | 11.03 | 0.728 5 |
| Griddehazenet[ | 2019 | 图像去雾 | 22.80 | 0.921 7 | 19.69 | 0.854 5 |
| FFA[ | 2020 | 图像去雾 | 22.11 | 0.900 7 | 16.65 | 0.813 3 |
| MSDBN[ | 2020 | 图像去雾 | 23.70 | 0.885 8 | 22.01 | 0.875 9 |
| Dehamer[ | 2022 | 图像去雾 | 22.92 | 0.904 4 | 19.43 | 0.700 8 |
| Dehazeformer[ | 2023 | 图像去雾 | 25.44 | 0.928 6 | 19.92 | 0.814 9 |
| DEA-Net[ | 2024 | 图像去雾 | 28.29 | 0.918 8 | 20.28 | 0.778 8 |
| VDH[ | 2018 | 视频去雾 | 17.97 | 0.778 0 | 16.64 | 0.813 3 |
| EDVR[ | 2019 | 视频去雾 | 22.91 | 0.903 6 | 21.22 | 0.870 7 |
| CG-IDN[ | 2021 | 视频去雾 | 25.25 | 0.915 5 | 23.21 | 0.883 6 |
| BasicVSR++[ | 2022 | 视频去雾 | 26.06 | 0.920 7 | 21.68 | 0.872 6 |
| MAP-Net[ | 2023 | 视频去雾 | 27.12 | 0.934 9 | 24.03 | 0.892 7 |
| DVD-Net[ | 2024 | 视频去雾 | 28.33 | 0.935 6 | 24.34 | 0.892 1 |
| PSTD-net | — | 视频去雾 | 28.66 | 0.938 7 | 23.65 | 0.896 7 |
Fig. 4 Qualitative comparison of restoration performance on sky regions under natural scenarios ((a) Input image; (b) EDVR; (c) Dehamer; (d) Dehazeformer; (e) DEA-net; (f) MAP-Net; (g) PSTD-net; (h) Ground truth)
Fig. 5 Qualitative comparison of sky region restoration in natural scenarios ((a) Input image; (b) EDVR; (c) Dehamer; (d) Dehazeformer; (e) DEA-net; (f) MAP-Net; (g) PSTD-net; (h) Ground truth)
Fig. 6 Qualitative comparison of dehazing performance on the REVIDE dataset ((a) Input image; (b) EDVR; (c) Dehamer; (d) Dehazeformer; (e) DEA-net; (f) MAP-Net; (g) PSTD-net; (h) Ground truth)
| 模型 | PSNR/dB | SSIM | FLOPS/G | 参数量/M |
|---|---|---|---|---|
| Base | 26.69 | 0.882 4 | 63.43 | 6.81 |
| Base-SDE | 27.32 | 0.911 0 | 63.12 | 6.80 |
| PSTD-net | 27.61 | 0.917 2 | 63.42 | 6.81 |
Table 2 Results of ablation experiments for the spatial detail enhancement module
| 模型 | PSNR/dB | SSIM | FLOPS/G | 参数量/M |
|---|---|---|---|---|
| Base | 26.69 | 0.882 4 | 63.43 | 6.81 |
| Base-SDE | 27.32 | 0.911 0 | 63.12 | 6.80 |
| PSTD-net | 27.61 | 0.917 2 | 63.42 | 6.81 |
| 模型 | PSNR/dB | SSIM | FLOPS/G | 参数量/ M |
|---|---|---|---|---|
| Base-Stack | 26.53 | 0.8768 | 57.96 | 6.45 |
| Base-SDE | 27.43 | 0.9135 | 58.49 | 6.44 |
| PSTD-net | 27.61 | 0.9172 | 63.42 | 6.81 |
Table 3 Results of ablation experiments for the cross-frame detail enhancement module
| 模型 | PSNR/dB | SSIM | FLOPS/G | 参数量/ M |
|---|---|---|---|---|
| Base-Stack | 26.53 | 0.8768 | 57.96 | 6.45 |
| Base-SDE | 27.43 | 0.9135 | 58.49 | 6.44 |
| PSTD-net | 27.61 | 0.9172 | 63.42 | 6.81 |
| 损失 | PSNR | SSIM | 迭代次数/ K |
|---|---|---|---|
| L1 | 26.57 | 0.893 9 | 40 |
| L2 | 26.02 | 0.879 3 | 40 |
| L1+L2 | 26.86 | 0.903 2 | 40 |
| L1+LCR | 27.61 | 0.917 2 | 40 |
Table 4 Results of ablation experiments for different loss terms
| 损失 | PSNR | SSIM | 迭代次数/ K |
|---|---|---|---|
| L1 | 26.57 | 0.893 9 | 40 |
| L2 | 26.02 | 0.879 3 | 40 |
| L1+L2 | 26.86 | 0.903 2 | 40 |
| L1+LCR | 27.61 | 0.917 2 | 40 |
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