Entropy (Jan 2022)

Visual Recognition of Traffic Signs in Natural Scenes Based on Improved RetinaNet

  • Shangwang Liu,
  • Tongbo Cai,
  • Xiufang Tang,
  • Yangyang Zhang,
  • Changgeng Wang

DOI
https://doi.org/10.3390/e24010112
Journal volume & issue
Vol. 24, no. 1
p. 112

Abstract

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Aiming at recognizing small proportion, blurred and complex traffic sign in natural scenes, a traffic sign detection method based on RetinaNet-NeXt is proposed. First, to ensure the quality of dataset, the data were cleaned and enhanced to denoise. Secondly, a novel backbone network ResNeXt was employed to improve the detection accuracy and effection of RetinaNet. Finally, transfer learning and group normalization were adopted to accelerate our network training. Experimental results show that the precision, recall and mAP of our method, compared with the original RetinaNet, are improved by 9.08%, 9.09% and 7.32%, respectively. Our method can be effectively applied to traffic sign detection.

Keywords