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CapsNet-based Precise and Rapid Traffic Sign Detection through AI in Adverse Environmental Scenarios


Affiliations
1 Department of Computer Science and Engineering, Faculty of Engineering and Technology, SRM Institute of Science and Technology, Delhi - NCR Campus, Delhi - Meerut Road, Modinagar, Ghaziabad, Uttar Pradesh 201204, India
2 Department of Information Technology, Meerut Institute of Engineering and Technology, Meerut, India

This research presents an innovative system for real-time recognition of traffic signs, leveraging Artificial Intelligence (AI) to achieve high-performance identification, particularly under challenging conditions prevalent in traffic scenarios such as occlusions, atmospheric haze, and noise. The proposed system employs an advanced Capsule Network (CapsNet) algorithm for object recognition, trained extensively on a diverse dataset encompassing images of various traffic signs. Notably, the system demonstrates concurrent detection capabilities for multiple traffic signals, accurately categorizing them based on their respective classes. To address distortions caused by alterations in the camera's perspective, including rotation, torsion, and elongation, the system effectively employs techniques ensuring precise alignment with the pertinent traffic sign. Furthermore, pre-processing techniques are utilized to resolve ambiguity and distortions in complex traffic scenarios. Empirical validation of the proposed methodology is conducted through experimentation with authentic traffic sign images obtained from diverse environmental contexts. Comparative assessments across diverse datasets representing prominent traffic sign domains affirm the efficacy of the proposed approach. The outcomes showcase a noteworthy precision level, achieving a recognition accuracy of 99.16% for traffic signs. In contrast, conventional rule-based systems under identical conditions exhibit accuracy rates ranging between 80–90%. The AI-driven system demonstrates real-time operational feasibility, positioning it as a fitting candidate for applications in traffic management and intelligent transportation systems.

Keywords

Autonomous driving vehicles, Artificial intelligence, Intelligent transportation, Neural networks, Traffic sign detection
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  • CapsNet-based Precise and Rapid Traffic Sign Detection through AI in Adverse Environmental Scenarios

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Authors

Ravinder Kaur
Department of Computer Science and Engineering, Faculty of Engineering and Technology, SRM Institute of Science and Technology, Delhi - NCR Campus, Delhi - Meerut Road, Modinagar, Ghaziabad, Uttar Pradesh 201204, India
Jitendra Singh
Department of Computer Science and Engineering, Faculty of Engineering and Technology, SRM Institute of Science and Technology, Delhi - NCR Campus, Delhi - Meerut Road, Modinagar, Ghaziabad, Uttar Pradesh 201204, India
Swati Sharma
Department of Information Technology, Meerut Institute of Engineering and Technology, Meerut, India

Abstract


This research presents an innovative system for real-time recognition of traffic signs, leveraging Artificial Intelligence (AI) to achieve high-performance identification, particularly under challenging conditions prevalent in traffic scenarios such as occlusions, atmospheric haze, and noise. The proposed system employs an advanced Capsule Network (CapsNet) algorithm for object recognition, trained extensively on a diverse dataset encompassing images of various traffic signs. Notably, the system demonstrates concurrent detection capabilities for multiple traffic signals, accurately categorizing them based on their respective classes. To address distortions caused by alterations in the camera's perspective, including rotation, torsion, and elongation, the system effectively employs techniques ensuring precise alignment with the pertinent traffic sign. Furthermore, pre-processing techniques are utilized to resolve ambiguity and distortions in complex traffic scenarios. Empirical validation of the proposed methodology is conducted through experimentation with authentic traffic sign images obtained from diverse environmental contexts. Comparative assessments across diverse datasets representing prominent traffic sign domains affirm the efficacy of the proposed approach. The outcomes showcase a noteworthy precision level, achieving a recognition accuracy of 99.16% for traffic signs. In contrast, conventional rule-based systems under identical conditions exhibit accuracy rates ranging between 80–90%. The AI-driven system demonstrates real-time operational feasibility, positioning it as a fitting candidate for applications in traffic management and intelligent transportation systems.

Keywords


Autonomous driving vehicles, Artificial intelligence, Intelligent transportation, Neural networks, Traffic sign detection