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CLASSIFICATION OF VEHICLE TYPES USING BACKPROPAGATION NEURAL NETWORKS WITH METRIC AND ECENTRICITY PARAMETERS
Author(s) -
Hendra Mayatopani,
Rohmat Indra Borman,
Wahyu Tisno Atmojo,
Arisantoso Arisantoso
Publication year - 2021
Publication title -
jurnal riset informatika
Language(s) - English
Resource type - Journals
eISSN - 2656-1743
pISSN - 2656-1735
DOI - 10.34288/jri.v4i1.293
Subject(s) - backpropagation , artificial neural network , metric (unit) , computer science , feature extraction , artificial intelligence , pattern recognition (psychology) , feature (linguistics) , rprop , machine learning , time delay neural network , types of artificial neural networks , engineering , linguistics , operations management , philosophy
One of the efforts to break down traffic jams is to establish special lanes that can be passed by two, four or more wheeled vehicles. By being able to recognize the type of vehicle can reduce congestion. Citran based vehicle classification helps in providing information about the vehicle type. This study aims to classify the type of vehicle using a backpropagation neural network algorithm. The vehicle image can be recognized based on its shape, then the backpropagation neural network algorithm will be supported by metric and eccentricity parameters to perform feature extraction. Then from the results of feature extraction with metric parameters and eccentricity, the object will be classified using a backpropagation neural network algorithm. The test results show an accuracy of 87.5%. This shows the algorithm can perform classification well.

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