Studying Very Low Resolution Recognition Using Deep Networks
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Studying Very Low Resolution Recognition Using Deep Networks
Apr 1, 2016 - to combat the LR-HR domain mismatch, and the robustness to outliers. Finally, the ... and low-quality. In a text recognition system [15], cheap.