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Identification and Detection of Traffic Signs based on Faster R-CNN

摘要


This paper applies the Tensorflow deep learning framework and adopts the target detection algorithm in deep learning to solve the problem of road traffic sign identification. First, 90.8%mAP was obtained by training the deep learning target detection algorithm of Faster R-CNN, and then 93.12%mAP was obtained by training the data set into large target, medium target and small target.

參考文獻


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