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논문검색

Automatic Traffic Scene Analysis Using Supervised Machine Learning Algorithms - Backpropagation Neural Networks and Support Vector Machines

초록

영어

Automatic traffic scene analysis which has been used for real-time on-road vehicle detection system is essential to many areas of ITS (Intelligent Transport Systems). In order to improve the detection time and accuracy of detection performance, various image processing techniques have been used for real-time vehicle detection. Moreover, Neural Networks have been increasingly and successfully applied to many problems for ITS research topics. Support Vector Machines (SVMs) are currently another efficient approach to vehicle detection because of their remarkable performance. In this research, two different models, Backpropagation which is the best-known neural network model and SVMs have been studied to compare their performance in predictive accuracy, through experiment with real world image data of traffic scenes. Experimental results show that SVMs can provide higher performance in terms of predictive performance than the well-known Backpropagation neural network model.

목차

Abstract
 1. Introduction
 2. Backpropagation and SVMs (Support Vector Machines)
  3.1. Backpropagation Neural Networks
  3.2. Support Vector Machines
 3. Experiments and results
  3.1. Data Sets for Learning and Testing
  3.2. Network Architecture and Parameter Value
  3.3. Predictive Performance of Backpropagation and SVMs
 4. Conclusion
 Acknowledgements
 References

저자정보

  • Heejong Suh Department of Electronic Communication Engineering, Chonnam National University
  • Daehyon Kim Department of Marine and Civil Engineering, Chonnam National University
  • Changsoo Jang Department of Computer Engineering, Chonnam National University

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