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Retinal Vessel Segmentation from Holographic Doppler Imaging
This dataset provides paired images and segmentation masks for retinal vessel segmentation from holographic Doppler imaging.
It is designed for research in computational imaging, retinal blood flow analysis, and deep learning-based vessel segmentation.
Dataset Summary
Holographic Doppler imaging enables quantitative blood flow mapping in the retina by analyzing temporal fluctuations in optical interferograms.
This dataset includes power Doppler images (M0) and their corresponding artery and vein segmentation masks, representing the spatial distribution of retinal blood flow observed through laser Doppler holography.
Temporal informations derived from the arterial signal, namely the correlation map and the diasys image, are also provided.
See the article submitted to ISBI2026 (linked soon) for more details
Data Description
| Attribute | Description |
|---|---|
| Imaging modality | Holographic Laser Doppler imaging of the retina |
| Input type | Power Doppler intensity images (M0), Correlation map, Diasys image |
| Target type | Artery and Vein masks : binary segmentation masks (vessels vs. background) |
| Classes | 0: Background, 1: Vessel |
| File format | PNG (8-bit grayscale) |
| Typical image size | 1023 Γ 1023 pixels |
| Sampling | Retinal field of view from high-speed interferometric acquisitions |
| Preprocessing | Temporal SVD filtering, Fresnel reconstruction, power Doppler accumulation |
Dataset Structure
HoloDopplerSegISBI/
βββ dataset.py
βββ README.md
βββ train/
β βββ measure/
β β βββ M0.png
β β βββ correlation.png
β β βββ diasys.png
β β βββ maskArtery.png
β β βββ maskVein.png
β βββ ...
βββ test/
βββ measure/
βββ ...\
Measures have the following form : id_eye__number, with:
- id corresponding to a unique patient.
- eye equals to 'R' or 'L', respectively for right eye or left eye
- number indicating which measure of the same eye it is
Dataset split
The data were split into 121 training and 24 test samples, with no patient overlap between splits.
The number of measures, detailed by eyes, are summarized in the metadata/train_patients.csv and metadata/test_patients.csv
Due to the recent nature of this dataset, the number of measures vary per patients, ranging from 1 measure up to 14, causing potential bias. Still, using the given train/test split, our experiments showed that using all available data yielded the best performance.
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