The dataset viewer is not available because its heuristics could not detect any supported data files. You can try uploading some data files, or configuring the data files location manually.
LRID-simplified Dataset
π Overview
This is a simplified version of the Low-light Raw Image Denoising (LRID) dataset, designed for low-light image denoising research. It is part of the PMN_TPAMI project (Learnability Enhancement for Low-light Raw Denoising: A Data Perspective, TPAMI 2024).
Compared to the full LRID dataset, this version retains only the essential components for validation purposes while significantly reducing the size.
GitHub: https://github.com/megvii-research/PMN/tree/TPAMI
ποΈ Dataset Structure
PMN_TPAMI
ββLRID_simplified # Simplified dataset for training & evaluation
ββbias # Dark frames (sensor bias)
ββbias-hot # Dark frames in hot mode of the sensor
β
ββindoor_x5 # Indoor scenes
β ββ100 # Long-Exposure Raw Data (ISO-100)
β β ββ000 # Scene Number (only the first frame of the original 25 is kept)
β β ββ...
β β
β ββ6400 # Low-light noisy data (ISO-6400)
β β ββ1 # Digital gain (low-light ratio)
β β β ββ000 # Scene number (only the first frame of the original 10 is kept)
β β β ββ...
β β ββ...
β β
β ββnpy # Binary data
β β ββGT_align_ours # Ground truth after multi-frame fusion
β β
β ββref # Long-exposure reference data (ISO-100)
β β ββ000 # Scene number
β β β βββ *.dng # RAW reference frame (ISO-100)
β β β βββ *.jpeg # JPEG image after camera ISP
β β ββ...
β β
β ββmetadata_indoor_x5_gt.pkl # Metadata (white balance, CCM, etc.)
β
ββoutdoor_x3 # Outdoor scenes
β ββ... # (Structure similar to indoor_x5)
β
ββindoor_x3 # Indoor scenes with ND filter
β ββ... # (Structure similar to indoor_x5)
β
ββoutdoor_x5 # Outdoor scenes (abandon)
β ββ... # (Structure similar to indoor_x5)
β
ββresources # Noise calibration results (e.g., dark shading)
π― Key Features
- Simplified version:
- β Only the first noisy frame per scene/setting is kept (originally 10 frames per scene for training).
- β All ground truth images are retained.
- β
Dark frames (
bias,bias-hot) are included for calibration. - β
Reference data (
ref/) provides ISO-100 long-exposure RAW and its camera-processed JPEG for each scene. - β Original images used for dataset creation are excluded.
- β Intermediate results are excluded.
- β Most noisy frames used for training are excluded.
π Scene Categories
| Subset | Description | Gain | Lighting Condition |
|---|---|---|---|
indoor_x5 |
Indoor scenes | 5Γ | Low-light |
outdoor_x3 |
Outdoor scenes | 3Γ | Low-light |
indoor_x3 |
Indoor scenes with ND filter | 3Γ | Controlled lighting |
outdoor_x5 (abandon) |
Outdoor scenes | 5Γ | Low-light (a little misalignment) |
π Contents Description
- Noisy frames (e.g.,
indoor_x5/6400/1/000/): contain the first frame of each burst in RAW format. - Ground truth (
npy/GT_align_ours): multi-frame fusion results stored as NumPy binaries (aligned and denoised). - Reference (
ref/): for each scene, an ISO-100 long-exposure RAW and its corresponding JPEG (processed by the camera ISP) are provided as ideal references. - Metadata (
.pklfiles): include white balance gains, color correction matrices (CCM), and other camera parameters essential for accurate raw data processing. - Dark frames (
bias/,bias-hot/): sensor bias frames under normal and hot modes, useful for noise calibration and dark current subtraction. - Resources (
resources/): calibration data such as dark shading patterns.
βοΈ Usage Notes
- This dataset is intended for validation or testing rather than full training due to the reduced number of noisy frames.
- Each scene originally contained 10 frames; only the first frame (index
000) is preserved in this simplified version. - Ground truth images are generated by aligning and fusing multiple frames, providing high-quality clean references.
- The
ref/folders contain the ISO-100 long-exposure captures, which serve as near-ideal clean references for evaluating denoising performance. - Metadata files are crucial for correctly interpreting the raw sensor data; please refer to them when applying any ISP pipeline.
π Access
Full LRID Dataset: The complete version with all training frames (10 frames per scene) is currently being uploaded and will be available soon.
URL: https://huggingface.co/datasets/hansen97/LRID_Simplified
π Citation
If you use this dataset in your research, please cite:
@inproceedings{feng2022learnability,
author = {Feng, Hansen and Wang, Lizhi and Wang, Yuzhi and Huang, Hua},
title = {Learnability Enhancement for Low-Light Raw Denoising: Where Paired Real Data Meets Noise Modeling},
booktitle = {Proceedings of the 30th ACM International Conference on Multimedia},
year = {2022},
pages = {1436β1444},
numpages = {9},
location = {Lisboa, Portugal},
series = {MM '22}
}
@ARTICLE{feng2023learnability,
author={Feng, Hansen and Wang, Lizhi and Wang, Yuzhi and Fan, Haoqiang and Huang, Hua},
journal={IEEE Transactions on Pattern Analysis and Machine Intelligence},
title={Learnability Enhancement for Low-Light Raw Image Denoising: A Data Perspective},
year={2024},
volume={46},
number={1},
pages={370-387},
doi={10.1109/TPAMI.2023.3301502}
}
π§ Contact
For questions or issues, please contact Hansen at hansen97@outlook.com.
- Downloads last month
- 4