Reading Barcodes with Neural Networks
@inproceedings{Fridborn2017ReadingBW, title={Reading Barcodes with Neural Networks}, author={Fredrik Fridborn}, year={2017} }
Barcodes are ubiquituous in modern society and they have had industrial application for decades. However, for noisy images modern methods can underperform. Poor lighting conditions, occlusions and ...
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