4.3 Article

A Particle Swarm Optimization Based Deep Learning Model for Vehicle Classification

期刊

COMPUTER SYSTEMS SCIENCE AND ENGINEERING
卷 40, 期 1, 页码 223-235

出版社

TECH SCIENCE PRESS
DOI: 10.32604/csse.2022.018430

关键词

Vehicle classification; intelligent transport system; deep learning; constrained machine learning; particle swarm optimization; CNN GoogleNet

资金

  1. Deanship of Scientific Research at Prince Sattam Bin Abdulaziz University, Saudi Arabia [2020/01/14224]

向作者/读者索取更多资源

This paper presents the application of image classification in the domain of vehicle classification, using pre-trained CNN model and particle swarm optimization algorithm for autonomous vehicle classification. Through empirical evaluations and statistical tests, the model demonstrates outstanding performance in terms of accuracy, training time, and speed prediction.
Image classification is a core field in the research area of image processing and computer vision in which vehicle classification is a critical domain. The purpose of vehicle categorization is to formulate a compact system to assist in real-world problems and applications such as security, traffic analysis, and self driving and autonomous vehicles. The recent revolution in the field of machine learning and artificial intelligence has provided an immense amount of support for image processing related problems and has overtaken the conventional, and handcrafted means of solving image analysis problems. In this paper, a combination of pre-trained CNN GoogleNet and a nature-inspired problem optimization scheme, particle swarm optimization (PSO), was employed for autonomous vehicle classification. The model was trained on a vehicle image dataset obtained from Kaggle that has been suitably augmented. The trained model was classified using several classifiers; however, the Cubic SVM (CSVM) classifier was found to outperform the others in both time consumption and accuracy (94.8%). The results obtained from empirical evaluations and statistical tests reveal that the model itself has shown to outperform the other related models not only in terms of accuracy (94.8%) but also in terms of training time (82.7 s) and speed prediction (380 obs/sec).

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