PREDICT STEERING ANGLES IN SELF-DRIVING CARS USING INNOVATION CONVOLUTIONAL NEURAL NETWORK | Hiếu | TNU Journal of Science and Technology

PREDICT STEERING ANGLES IN SELF-DRIVING CARS USING INNOVATION CONVOLUTIONAL NEURAL NETWORK

About this article

Received: 24/02/22                Revised: 12/05/22                Published: 16/05/22

Authors

1. Luong Thi Thao Hieu Email to author, University of Economic and Technical Industries
2. Pham Thi Thuy, University of Economic and Technical Industries

Abstract


Now a day, artificial intelligence and deep learning have emerged as evidence of the industrial revolution 4.0. Convolutional Neural Network (CNN) is one of the most popular Deep Learning network models, capable of recognizing and classifying images with high accuracy, even better than humans in many cases. This model has been applied to large image processing systems as Facebook, Google or Amazon... In this paper, we focus on studying some advanced CNN network models (VGG-16), based on VGG-16 architecture, we build new model, by increasing network depth, interleaved kernel 3x3, 1x1 increasing number of convolutional blocks, using Exponential Linear Unit (ELU) activation function after each convolution layer. Apply a new model to predict steering angles in autonomous driving based on image data obtained from Udacity self-driving car simulation software. Evaluation, experimentation, and research results show that the steering angle prediction in new model is really effective.

Keywords


Self-driving car; CNN; Deep learning; Steering Angles; VGG16

References


[1] D. Wang, J. Wen, Y. Wang, X. Huang, and F. Pei, “End-to-end self-driving using deep neural network with multi-auxilary tasks,” Automotive Innovation, vol. II, no. 2, pp. 127-136, 2019.

[2] U. M. Gidado, H. Chiroma, N. Aljojo, S. Abubakar, and S. I. Popoola, “A survey on deep learning for steering angle prediction in autonomous vehicles,” IEEE Access, vol. VIII, pp. 163797-163817, 2020.

[3] X. Galorot and Y. Bengio, “Understanding difficulty of traning feedforward neural networks,” In Proc. AISTATS, vol. IX, pp. 249-256, 2010.

[4] A. Krizhevsky, I. Sutskever, and G. E. Hinton, “Imagenet classsification with deep convolutional neural networks,” Communications of the ACM, vol. I, no. 60, pp. 84-90, 2012.

[5] Y. LeCun, B. Boser, J. S. Denker, D. Henderson, R. E. Howard, W. Hubbard, and L. D. Jacket, “Backpropopagation applied to handwritten zip code recognition,” Neural Computation, vol. I, no. 4, pp. 541-551, 1989.

[6] A. Bakhshi, N. Norman, Z. Chen, M. Zamani, and S. Chalup, “Fast automatic optimisation of cnn archi-tectures for image classification using genetic algorithm,” in IEEE Congress on Evolutionary Computation (CEC) Conf.Proc., Wellington, New Zealand, 2019.

[7] Zisserman, K. Simonyan, and Andrew, “Very deep convolutional network for large-scale image recognition,” The 3rd International Conference on Learning Representations(ICLR2015), 2015.

[8] M. V. Smolyakov, A. I. Frolov, V. N. Volkov, and I. V. Stelmashchuk, “Self-driving car steering angleprediction based on deep neural network an example of carND udacity simulator,” in IEEE 12th Int. Conf.on Application of Information and Communication Technologies (AICT), Almaty, Kazakhstan, 2018.

[9] H. Saleem, F. Riaz, L. Mostarda, M. A. Niazi, and A. Rafiqet, “Steering angle prediction techniques forautonomous ground vehicles: A review,” IEEE Access, vol. IX, pp. 78567-78585, 2021.

[10] M. Bojarski, D. W. Testa, D. Dworakowski, B. Firner, B. Flepp, P. Goyal, L. D. Jackel, M. Monfort, U. J. Muller, X. Zhang, J. Zhao, and K. Zieba, “End to End Learning for Self-Driving Cars,” ArXiv, vol. abs/1604.07316., 2016.

[11] V. Rausch, A. Hansen, E. Solowjow, C. Liu, and E. Kreuzer, “Learning a deep neural net policy for end-to-end control of autonomous vehicles,” in American Control Conf. (ACC), Seattle, USA, 2017, pp. 4914-4919.

[12] S. Lade, P. Shrivastav, S. Waghmare, S. Hon, S. Waghmode, and S. Teli, “Simulation of Self Driving Car Using Deep Learning,” 2021 International Conference on Emerging Smart Computing and Informatics (ESCI), 2021.




DOI: https://doi.org/10.34238/tnu-jst.5585

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