rFRC (rolling Fourier ring correlation) mapping and PANEL (Pixel-level ANalysis of Error Locations) pinpointing with Matlab is distributed as accompanying software for publication: Weisong Zhao et al. Quantitatively mapping local quality of super-resolution microscopy by rolling Fourier ring correlation, Light: Science & Applications (2023). More details on Wiki. If it helps your research, please cite our work in your publications.
If you are not a MATLAB user, you can have a try on the ImageJ version: PANELJ, or the Python version: PANELpy.
The rFRC
is for quantitatively mapping the local image quality (effective resolution, data uncertainty). The lower effective resolution gives a higher probability to the error existence, and thus we can use it to represent the uncertainty revealing the error distribution.
rFRC is capable of:
- Data uncertainty mapping of reconstructions without Ground-Truth (Reconstruction-1 vs Reconstruction-2) | 3σ curve is recommended;
- Data uncertainty and leaked model uncertainty mapping of deep-learning predictions of low-level vision tasks without Ground-Truth (Prediction-1 from input-1 vs Prediction-2 from input-2) | 3σ curve is recommended;
- Model uncertainty mapping of deep-learning predictions of low-level vision tasks without Ground-Truth (Prediction-1 from model-1 vs Prediction-2 from model-2) | 3σ curve is recommended;
- Full error mapping of reconstructions/predictions with Ground-Truth (Reconstruction/Prediction vs Ground-Truth) | 3σ curve is recommended;
- Resolution mapping of raw images (Image-1 vs Image-2) | 1/7 hard threshold or 3σ curve are both feasible;
When two-frame is not accessible, two alternative strategies for single-frame mapping is also provided (not stable, the two-frame version is recommended).
PANEL
-
We also accompany our
filtered rFRC
withtruncated RSM
(resolution-scaled error map) as afull PANEL
map, but thisRSM
is an optional feature that can be turn off as the wide-field reference being unavailable.PANEL
is for biologists to qualitatively pinpoint regions with low reliability as a concise visualization -
Note that our
rFRC
andPANEL
using two independent captures cannot fully pinpoint the unreliable regions induced by the model bias, which would require more extensive characterization and correction routines based on the underlying theory of the corresponding models.
- v0.4.5 Adaptive background threshold & parallel acceleration
- v0.3.0 Single-frame rFRC mapping
- v0.2.0 RSM and PANEL visualization
- v0.1.0 Initial rFRC mapping
- ImageJ version: PANELJ
- Python version: PANELM
- Some fancy results and comparisons: my website
- Further reading: #behind_the_paper.
- Publication:Weisong Zhao et al. Quantitatively mapping local quality of super-resolution microscopy by rolling Fourier ring correlation, Light: Science & Applications (2023).
- Preprint: Weisong Zhao et al., Quantitatively mapping local quality of super-resolution microscopy by rolling Fourier ring correlation, bioRxiv (2022).
Open source PANELM
- This software and corresponding methods can only be used for non-commercial use, and they are under Open Data Commons Open Database License v1.0.
- Feedback, questions, bug reports and patches are welcome and encouraged!