PCB DSLR DATASET
Description
The PCB DSLR dataset is meant to facilitate research on computer-vision-based Printed Circuit Board (PCB) analysis, with a focus on recycling-related applications. The dataset contains 748 images of PCBs from a recycling facility, captured under representative conditions using a professional DSLR camera. All images come with accurate PCB segmentation information as well as bounding box information for all Integrated Circuit (IC) chips (9313 samples).
Statistics
Please refer to [1] for detailed statistics.
- Camera: Nikon D4 with f/2.8 lens and polarization filter
- Image resolution: 4928×3280 (about 220 ppi)
- 165 different PCBs, 3 to 5 images per PCB, 748 images in total
- 2048 unique labeled ICs, 9313 labeled ICs in total
- 1740 ICs with label information in total
Download
The dataset is split into 8 parts. APIs for convenient use from Matlab, Python2, and C++ are available on github. The dataset is freely available for non-commercial research use. Please cite [1] when using the dataset.
References
[1] C. Pramerdorfer and M. Kampel, “A dataset for computer-vision-based PCB analysis,” 14th IAPR International Conference on Machine Vision Applications (MVA), Tokyo, 2015, pp. 378-381, doi: 10.1109/MVA.2015.7153209. 2015.
Files
cvl_pcb_dslr_1.zip
Files
(6.2 GB)
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Additional details
Funding
References
- C. Pramerdorfer and M. Kampel, "A dataset for computer-vision-based PCB analysis," 14th IAPR International Conference on Machine Vision Applications (MVA), Tokyo, 2015, pp. 378-381, doi: 10.1109/MVA.2015.7153209. 2015.