Revolutionizing Traffic Sign Recognition: Unveiling the Potential of Vision Transformers
Susano Mingwin, Yulong Shisu, Yongshuai Wanwag, Sunshin Huing

TL;DR
This paper presents a novel Vision Transformer-based approach for Traffic Sign Recognition, combining evolutionary algorithms and deformable modules to improve accuracy and speed in autonomous vehicle systems.
Contribution
It introduces a pyramid EATFormer backbone with EA integration and deformable modules, advancing deep learning methods for more reliable traffic sign recognition.
Findings
Enhanced prediction accuracy on GTSRB and BelgiumTS datasets
Improved processing speed over traditional CNN models
Demonstrated robustness under varying lighting and environmental conditions
Abstract
This research introduces an innovative method for Traffic Sign Recognition (TSR) by leveraging deep learning techniques, with a particular emphasis on Vision Transformers. TSR holds a vital role in advancing driver assistance systems and autonomous vehicles. Traditional TSR approaches, reliant on manual feature extraction, have proven to be labor-intensive and costly. Moreover, methods based on shape and color have inherent limitations, including susceptibility to various factors and changes in lighting conditions. This study explores three variants of Vision Transformers (PVT, TNT, LNL) and six convolutional neural networks (AlexNet, ResNet, VGG16, MobileNet, EfficientNet, GoogleNet) as baseline models. To address the shortcomings of traditional methods, a novel pyramid EATFormer backbone is proposed, amalgamating Evolutionary Algorithms (EAs) with the Transformer architecture. The…
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Taxonomy
TopicsVehicle License Plate Recognition · Handwritten Text Recognition Techniques · Advanced Neural Network Applications
Methods*Communicated@Fast*How Do I Communicate to Expedia? · Attention Is All You Need · Sparse Evolutionary Training · Batch Normalization · Depthwise Convolution · Pointwise Convolution · Depthwise Separable Convolution · RMSProp · 1x1 Convolution · Inverted Residual Block
