Deep-learning based trucks violation detection
No Thumbnail Available
Date
2020
Journal Title
Journal ISSN
Volume Title
Type
Other
Publisher
October University for Modern Sciences and Arts
Series Info
COMPUTER SCIENCES DISTINGUISHED PROJECTS 2020;
Doi
Scientific Journal Rankings
Abstract
This project builds a truck detecting model for automatically supporting the traffic department Decide if the truck is overloaded or Normal-loaded to help the traffic department in controlling of high-way roads. We build the model based on convolutional neural network model. The dataset of the truck is constructed and hyper parameters modified of the convolutional neural network. A basic network model has successfully been trained by KERAS library. The model by KERAS library achieves 91.67% on overload / normal-overload truck classification, which isn't a bad result. we dived deeply in the model by changing the model to work by TENSORFLOW library. we optimized the model by TENSORFLOW library, the optimized TENSORFLOW model achieved 96% on the test set, that's better than that 91.67% of the KERAS model.
Description
Computer sciences distinguished graduation projects 2020
Keywords
October University for Modern Sciences and Arts, University of Modern Sciences and Arts, جامعة أكتوبر للعلوم الحديثة و الآداب, MSA University, Deep-learning detection
Citation
Copyright © 2021 MSA University. All Rights Reserved.