Traffic sign recognition system using CNN and Keras
Keywords:
traffic sign recognition system, convolutional neural network, Keras, image processing, tensorflowAbstract
In this paper, we propose the best approach for a Traffic sign recognition system with a high accuracy rate and less computing time. This process is done with help of CNN and Keras. In fully automatic driving cars, it is difficult to recognize the traffic signs with less computing time and a high accuracy rate. So, to solve this problem, first, we are exploring the sample traffic sign dataset, next images are sorted and their labels are set into a list and those lists are converted into NumPy arrays for feeding to the model. Secondly, the CNN model is built to classify the images into their respective categories, this is the best approach for image classification. After building the model, the model is trained, validated, and tested using the test dataset. Finally, the graphical user interface is built for traffic sign recognition using Tkinter.
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References
Traffic Sign Detection and Recognition Based on Convolutional Neural Network, Yingsun; pingshuge; dequan liu, 2019, IEEE
Research and application of traffic sign detection and recognition based on deep learning, Canyong wang,2018 IEEE
Traffic sign detection and classification using color feature and neural network, Md. Abdul alim sheikh; alok kole; Tanmoy maity 2018 IEE
Autonomous Traffic Sign(ASTR) Detection and Recognition using Deep CNN, Danyah A.Alghmgham , ghazanfar latif , jaafar alghazo , loay alzubaidi ,2019 SCIENCEDIRECT
Understanding of a convolutional Neural network, saad albawi; tareq abed mohammed; saad al-zawi 2018 IEEE
Intelligent transportation system(its): Concept, challenge and opportunity, yangxin lin; ping wang; meng ma,2017 IEEE.
Data classification with deep learning using Tensorflow, Galip Aydın; Fatih Ertam, 2017, IEEE.
TFCheck: A TensorFlow Library for Detecting Training Issues in Neural Network Programs, Foutse Khomh; Houssem Ben Braiek, 2019, IEEE.
Accuracy Testing of Data Classification using Tensor Flow a Python Framework in ANN Designing, Neeraj Chauhan; Rakesh Kr. Dwivedi Ashutosh Kr. Bhatt; Rajendra Belwal, 2019, IEEE.
Performance of deep learning computation with TensorFlow software library in GPU-capable multi-core computing platforms, Young Jong Mo; JoongheonKim; Jong-KookKim; Aziz Mohaisen; Woojoo Lee, 2017, IEEE.
A Survey of Deep Learning: Platforms, Applications and Emerging Research Trends, Wei Yu, 2018, IEEE.
Object recognition in images using 2convolutional neural network, Duth P Sudharshan; Swathi Raj; 2018, IEEE.
Machine Learning and Deep Learning frameworks and libraries for large-scale data mining: a survey, Giang Nguyen, Stefan Dlugolinsky, Martin Bobák, Viet Tran, Álvaro López García, Ignacio Heredia, Peter Malík & Ladislav Hluchý; 2019, Springer.
Image Recognition with Deep Learning, Md Tohidul Islam; B.M. Nafiz Karim Siddique; Taskeed Jabid, Sagidur Rahman, 2018 IEEE.
Region based image retrieval using k-means and hierarchical clustering algorithms, R Abinaya, K Sakthivel, I Nivetha, RA Kumar.
Rinartha, K., & Suryasa, W. (2017). Comparative study for better result on query suggestion of article searching with MySQL pattern matching and Jaccard similarity. In 2017 5th International Conference on Cyber and IT Service Management (CITSM) (pp. 1-4). IEEE.
Rinartha, K., Suryasa, W., & Kartika, L. G. S. (2018). Comparative Analysis of String Similarity on Dynamic Query Suggestions. In 2018 Electrical Power, Electronics, Communications, Controls and Informatics Seminar (EECCIS) (pp. 399-404). IEEE.
Susilo, C. B., Jayanto, I., & Kusumawaty, I. (2021). Understanding digital technology trends in healthcare and preventive strategy. International Journal of Health & Medical Sciences, 4(3), 347-354. https://doi.org/10.31295/ijhms.v4n3.1769
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