2023
DOI: 10.11591/ijai.v12.i1.pp66-78
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Neural network-based parking system object detection and predictive modeling

Abstract: <span lang="EN-US">A neural network-based parking system with real-time license plate detection and vacant space detection using hyper parameter optimization is presented. When number of epochs increased from 30, 50 to 80 and learning rate tuned to 0.001, the validation loss improved to 0.017 and training object loss improved to 0.040. The model mean average precision mAP_0.5 is improved to 0.988 and the precision is improved to 99%. The proposed neural network-based parking system also uses a regulariza… Show more

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