Object Recognition Using Convolutional Neural Network Architecture
FYP 2 SEM 2 2019/2020
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my.uniten.dspace-212172023-05-04T13:09:16Z Object Recognition Using Convolutional Neural Network Architecture Prasantth a/l Subramaniam tensorflow deep learning age gender classification FYP 2 SEM 2 2019/2020 Evolution of current modern era demands a fast and excellent way of computing day by day. It has dramatically transformed how we work and live. Involvement of Artificial Intelligence (AI) has significantly show the intelligent behavior side of today’s computers. Now machines are making intelligent decisions in recognizing objects, people, and languages. In has massively create an impact in a world driven by technology. My thesis illustrates the method of recognizing age and gender of a human in real time with the help of pre-trained deep learning models. In my project work, the age database has a total of 13,420 face images which has been separated into two different class; child and adult. The gender database has a total of 2,000 face images which has been separated into two different class; male and female. The main idea of this research is to study the performance of deep learning models by training the architectures consist of neural networks to classify images based on class and can be use in real time classification as well. The three best deep learning models which are VGG16, ResNet50 and MobileNet been selected based on their performance on training and validation accuracy. Hence, some classification on test images to witness the performance of the neural networks. My project work to be illustrated in this thesis. 2023-05-03T16:15:45Z 2023-05-03T16:15:45Z 2020-02 https://irepository.uniten.edu.my/handle/123456789/21217 en application/pdf |
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tensorflow deep learning age gender classification Prasantth a/l Subramaniam Object Recognition Using Convolutional Neural Network Architecture |
description |
FYP 2 SEM 2 2019/2020 |
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|
author |
Prasantth a/l Subramaniam |
author_facet |
Prasantth a/l Subramaniam |
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Prasantth a/l Subramaniam |
title |
Object Recognition Using Convolutional Neural Network Architecture |
title_short |
Object Recognition Using Convolutional Neural Network Architecture |
title_full |
Object Recognition Using Convolutional Neural Network Architecture |
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Object Recognition Using Convolutional Neural Network Architecture |
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Object Recognition Using Convolutional Neural Network Architecture |
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object recognition using convolutional neural network architecture |
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2023 |
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1806423419989786624 |
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13.214268 |