MultiSolSegment: Labeled EL images - Metadata
| Project ID | a13f4716-8f75-49fd-9bd3-38940a6e5af1 | 
|---|---|
| Dataset ID | 5e7587ad-6ad1-4d6f-8432-70940a6d7ca1 | 
This dataset was used to train MultiSolSegment, a multi-channel segmentation model for photovoltaic defect detection. It contains electroluminescent (EL) images of monocrystalline solar modules from four sources:
DOI: https://doi.org/10.21948/2587738
- Arizona State University
 - Case Western Reserve University
 - Lawrence Berkeley National Laboratory (part of the pv-vision effort)
 
All images are 256×256 RGB and normalized using ImageNet mean/std values. Images were augmented via flips along the x, y, and both axes, increasing the dataset size by a factor of 4. The combined dataset contains 2,340 images.
The classes in the data are as follows:
- Dark regions
 - Busbars
 - Cracks
 - Non-cell areas
 
Labels were annotated in Supervisely and converted to multi-channel binary masks (NumPy .npy format, 4 channels). Each channel represents one class; pixels can belong to multiple classes.
Dataset Metadata
| 作成者 | Ojas Sanghi | 
| メンテナーのemail | nrjost@sandia.gov | 
| DOI | 10.21948/2587738 | 
| Institution | SNL | 
| Data Source Type | Databases | 
| Measurement Types | EL | 
| Owner | normanj | 
| タイプ | Other | 
| Access Method | Web Interface | 
| 作成者 | Ojas Sanghi | 
|---|---|
| Updated | 10月 21, 2025, 14:15 (UTC) | 
| 作成日 | 8月 14, 2025, 00:53 (UTC) |