Advancements in Traffic Sign Recognition and Detection: Harnessing the Power of Intelligent Systems
DOI:
https://doi.org/10.62051/ts4zsj13Keywords:
Traffic sign recognition; Deep learning; Convolutional neural networks.Abstract
This paper delves into the current research landscape of traffic sign recognition and detection, aiming for a comprehensive understanding of the field's developmental trajectory, significant achievements, and persistent enigmas. This is achieved through an extensive review of pertinent literature from both domestic and international sources. Within the research backdrop, it explores the diverse methodologies and challenges encountered in traffic sign detection and recognition, with a specific emphasis on algorithms powered by deep learning. The paper provides an in-depth analysis of the notable advancements these deep learning-based algorithms have achieved in recent years, marking a significant stride in the field. Furthermore, it scrutinizes the implications of these advancements for the future of automated and intelligent transportation systems. Building on this analysis, the paper forecasts future research directions, intending to offer a referential and guiding framework for subsequent, more profound investigations. This comprehensive approach not only showcases the current state of the art but also lights the path for future explorations that could revolutionize the landscape of traffic sign recognition and its application in autonomous driving technologies.
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References
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