ANALYSIS OF FEEDFORWARD-BACKPROPAGATION NEURAL NETWORKS USED IN-VEHICLE DETECTION

被引:21
|
作者
MANTRI, S
BULLOCK, D
机构
[1] LOUISIANA STATE UNIV,REMOTE SENSING & IMAGE PROC LAB,BATON ROUGE,LA 70803
[2] LOUISIANA STATE UNIV,DEPT CIVIL ENGN,BATON ROUGE,LA 70803
关键词
D O I
10.1016/0968-090X(95)00004-3
中图分类号
U [交通运输];
学科分类号
08 ; 0823 ;
摘要
Current vision-based vehicle detection systems use image-processing algorithms to monitor the presence of vehicles on the roads. Recent research has shown that an artificial feedforward neural network tan be trained to provide similar capabilities. A properly trained and configured network should be able to recognize the presence of vehicles in the images it has never been exposed to. This paper discusses the development of a feedforward-backpropagation neural network-based vehicle detection system that recognizes and tracks vehicles with satisfactory reliability and efficiency. Various issues that are important in selecting the optimal neural network model-like the architecture of the network including the number of hidden layers, their units, learning rule, tiling characteristics of the input image and the output representation of the network-are addressed in this paper. This paper also analyzes how the neural network internally learns the mapping knowledge of the input-output training pairs. The final section describes an output post processor that produces the traditional pulse and presence signals.
引用
收藏
页码:161 / 174
页数:14
相关论文
共 50 条
  • [31] Comparative analysis of backpropagation and counterpropagation neural networks
    Ellingsen, Barry Kristian
    [J]. Neural Network World, 1994, 4 (06) : 719 - 733
  • [32] APPLYING BACKPROPAGATION NEURAL NETWORKS TO FRINGE ANALYSIS
    MILLS, H
    BURTON, DR
    LALOR, MJ
    [J]. OPTICS AND LASERS IN ENGINEERING, 1995, 23 (05) : 331 - 341
  • [33] In-Vehicle Occupancy Detection with Convolutional Networks on Thermal Images
    Nowruzi, Farzan Erlik
    El Ahmar, Wassim A.
    Laganiere, Robert
    Ghods, Amir H.
    [J]. 2019 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION WORKSHOPS (CVPRW 2019), 2019, : 941 - 948
  • [34] Unsupervised intrusion detection system for in-vehicle communication networks
    Kabilan, N.
    Ravi, Vinayakumar
    Sowmya, V.
    [J]. JOURNAL OF SAFETY SCIENCE AND RESILIENCE, 2024, 5 (02): : 119 - 129
  • [35] Noise-Boosted Backpropagation Learning of Feedforward Threshold Neural Networks for Function Approximation
    Duan, Lingling
    Duan, Fabing
    Chapeau-Blondeau, Francois
    Abbott, Derek
    [J]. IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2021, 70 (70)
  • [36] Towards a Lightweight Intrusion Detection Framework for In-Vehicle Networks
    Basavaraj, Dheeraj
    Tayeb, Shahab
    [J]. JOURNAL OF SENSOR AND ACTUATOR NETWORKS, 2022, 11 (01)
  • [37] Entropy-Based Anomaly Detection for In-Vehicle Networks
    Mueter, Michael
    Asaj, Naim
    [J]. 2011 IEEE INTELLIGENT VEHICLES SYMPOSIUM (IV), 2011, : 1110 - 1115
  • [38] Intrusion Detection System Based on Deep Neural Network and Incremental Learning for In-Vehicle CAN Networks
    Lin, Jiaying
    Wei, Yehua
    Li, Wenjia
    Long, Jing
    [J]. UBIQUITOUS SECURITY, 2022, 1557 : 255 - 267
  • [39] Rec-CNN: In-vehicle networks intrusion detection using convolutional neural networks trained on recurrence plots
    Ohira, Shuji
    Arai, Ismail
    Fujikawa, Kazutoshi
    Desta, Araya Kibrom
    [J]. VEHICULAR COMMUNICATIONS, 2022, 35
  • [40] A constructive approach of modified standard backpropagation algorithm with optimum initialization for feedforward neural networks
    Gunaseeli, N.
    Karthikeyan, N.
    [J]. ICCIMA 2007: INTERNATIONAL CONFERENCE ON COMPUTATIONAL INTELLIGENCE AND MULTIMEDIA APPLICATIONS, VOL I, PROCEEDINGS, 2007, : 325 - 331