Image Classification of all MTU Chapel Books Using Artificial Neural Network (Record no. 6138)

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100 ## - MAIN ENTRY--AUTHOR
Author OBIKE, Emmanuel
245 ## - TITLE STATEMENT
Title Image Classification of all MTU Chapel Books Using Artificial Neural Network
250 ## - SUPERVISOR
Supervisor Dr. AKINYEMI, I. O.
260 ## - IMPRINT
Place of publication Ibafo
Department (College) Computer Science and Mathematics
Date of publication 2020
300 ## - COLLATION
Pagination viii,; 41p.
Other physical details dia
520 ## - SUMMARY, ETC.
Summary, etc This project is based on Image Classification of all Mountain Top University chapel books using artificial neural network which will be used in Mountain Top University chapel. The staff in chapel checks for student that don't come with their chapel books, even when the students are so many, in the process time wastage comes in, with the help of artificial neural network which will be used to check student without their chapel book then, that can make students comes to the chapel with their chapel manuals.<br/>The aim of this project is to create a system that can notify students that enters Mountain Top University chapel without their chapel book which has been made compulsory to all students to get it. To achieve this, the pictures of all the Mountain Top University chapel books will be taken for the system to recognize.<br/>The project was built using the Jupyter Notebook environment. In the Jupyter Notebook environment, data was uploaded in the environment where the data will ne trained so, the system will be able to recognize it anytime it is called.<br/>Artificial neural network (ANN) also known as neural networks is the piece of a computing device to model the human brain's way of interpreting and processing knowledge. It is the basis of artificial intelligence (AI) and solves problems that would prove impossible or complicated by human or statistical standards.
650 ## - TRACINGS
Main Subject Computer Science
942 ## - ADDED ENTRY ELEMENTS (KOHA)
Item type Students Thesis
Holdings
Source of classification or shelving scheme Not for loan Permanent location Current location Shelving location Date acquired Accen. No. Koha item type
    Main Library Main Library Reference 06.08.2021 16010301001 Students Thesis

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