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For self-driving cars and intelligent transportation systems, detecting and recognizing traffic signs is crucial.Real-time traffic sign detection and recognition from camera photos is the task at hand.Across a range of computer vision tasks, Convolutional Neural Networks (CNN) have demonstrated efficacy in achieving high accuracy.In this work, we provide a CNN-based method for identifying and detecting traffic signs.Our method makes use of a deep CNN architecture that is capable of simultaneous traffic sign detection and classification.We use a sizable dataset of photos of traffic signs to train the CNN model, and we assess its effectiveness using a dataset from real-world data.Our test findings show that the suggested method can identify traffic signs in real time with minimal processing overhead and high accuracy.
Haritha et al. (Sat,) studied this question.