IMPLEMENTATION OF IMAGE CLASSIFICATION USING CONVOLUTIONAL NEURAL NETWORK (CNN) ALGORITHM ON VEHICLES IMAGES

Muhammad Nurhadi, Joko Purnomo
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Abstract

The use of surveillance cameras for most agencies only relies on video recordings and storing them for a certain time. The use of this surveillance camera can be applied to determine the type of vehicle even if the camera is not in the right position. Regarding the background of the problem, this research will use the Convolutional Neural Network (CNN) algorithm, which is part of Deep Learning with the help of Keras Library and TensorFlow, to carry out the learning process on videos captured by surveillance cameras so that it can detect images from 3 types of vehicles. The dataset used is 100 images of motorcycles, 100 images of cars, and 100 images of buses. The method used is the Image Classification Method, and the model used is the best model selected from several experiments. Researchers used training and test data distribution, namely 80% and 20%. The best results were obtained with an accuracy rate of 96.49% using epoch 100, learning rate 0.001, and batch size 32. Meanwhile, vehicle images produced image accuracy for motorcycle images when using test data from outside the dataset is 78.92%, car image is 81.71%, and bus image is 82.26%.
基于卷积神经网络(cnn)算法的车辆图像分类实现
对大多数机构来说,监控摄像机的使用只依赖于录像并将其存储一段时间。使用这种监控摄像头,即使摄像头不在正确的位置,也可以应用于确定车辆的类型。关于问题的背景,本研究将使用卷积神经网络(CNN)算法,这是深度学习的一部分,在Keras Library和TensorFlow的帮助下,对监控摄像头捕获的视频进行学习过程,从而可以检测到3种类型车辆的图像。使用的数据集是100张摩托车图像,100张汽车图像和100张公共汽车图像。使用的方法是图像分类方法,使用的模型是经过多次实验选择的最佳模型。研究人员采用训练和测试数据分布,即80%和20%。使用epoch 100,学习率0.001,批大小为32,获得了准确率为96.49%的最佳结果。同时,车辆图像使用外部测试数据对摩托车图像生成的图像精度为78.92%,汽车图像为81.71%,公交车图像为82.26%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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