Snake species identification using image processing technique / Nur Farhani Azmi

The purpose of this project is to develop the application of classifying the snake species. The classification was conducted by using Inception-V3, a trained model of Convolutional Neural Network (CNN) by retraining the model with two (2) species of snake which are Reticulated Python from non-venomo...

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Main Author: Azmi, Nur Farhani
Format: Thesis
Language:English
Published: 2020
Subjects:
Online Access:https://ir.uitm.edu.my/id/eprint/31578/
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author Azmi, Nur Farhani
author_facet Azmi, Nur Farhani
author_sort Azmi, Nur Farhani
building UiTM Institutional Repository
collection Online Access
description The purpose of this project is to develop the application of classifying the snake species. The classification was conducted by using Inception-V3, a trained model of Convolutional Neural Network (CNN) by retraining the model with two (2) species of snake which are Reticulated Python from non-venomous snake species and Malayan Pit Viper from venomous species. This project was guided by using a Modified Waterfall methodology that consist of five (5) phases which are Planning, Analysis, Design, Development and Testing. This application was built using Android Studio where a retraining model process done on using Anaconda Command. The model that has been chosen can be applied to mobile application as it will be easy to be used by all users. This application has been tested with 20 images of snake. The result of the testing shows 90% accuracy rate and all the testing images were classified correctly and successfully. The perception survey also has been evaluated by giving list of questionnaires among authorize person who are directly involve with snake such as Angkatan Pertahanan Malaysia (APM) and Bomba. The questionnaire of the survey form is based on I/S Success Model. The purpose of this survey is to get authorize person perceptions toward the application where 69.60% of 15 authorize person agree that the application produce a correct result as the information quality of the application has the highest mean value. For the future, more species of snake should be added, and user will be able to save and share the result.
first_indexed 2025-11-14T22:48:31Z
format Thesis
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institution Universiti Teknologi MARA
institution_category Local University
language English
last_indexed 2025-11-14T22:48:31Z
publishDate 2020
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spelling uitm-315782020-06-26T04:03:24Z https://ir.uitm.edu.my/id/eprint/31578/ Snake species identification using image processing technique / Nur Farhani Azmi Azmi, Nur Farhani Android Neural networks (Computer science) The purpose of this project is to develop the application of classifying the snake species. The classification was conducted by using Inception-V3, a trained model of Convolutional Neural Network (CNN) by retraining the model with two (2) species of snake which are Reticulated Python from non-venomous snake species and Malayan Pit Viper from venomous species. This project was guided by using a Modified Waterfall methodology that consist of five (5) phases which are Planning, Analysis, Design, Development and Testing. This application was built using Android Studio where a retraining model process done on using Anaconda Command. The model that has been chosen can be applied to mobile application as it will be easy to be used by all users. This application has been tested with 20 images of snake. The result of the testing shows 90% accuracy rate and all the testing images were classified correctly and successfully. The perception survey also has been evaluated by giving list of questionnaires among authorize person who are directly involve with snake such as Angkatan Pertahanan Malaysia (APM) and Bomba. The questionnaire of the survey form is based on I/S Success Model. The purpose of this survey is to get authorize person perceptions toward the application where 69.60% of 15 authorize person agree that the application produce a correct result as the information quality of the application has the highest mean value. For the future, more species of snake should be added, and user will be able to save and share the result. 2020 Thesis NonPeerReviewed text en https://ir.uitm.edu.my/id/eprint/31578/1/31578.pdf Azmi, Nur Farhani (2020) Snake species identification using image processing technique / Nur Farhani Azmi. (2020) Degree thesis, thesis, Universiti Teknologi MARA, Cawangan Melaka. <http://terminalib.uitm.edu.my/31578.pdf>
spellingShingle Android
Neural networks (Computer science)
Azmi, Nur Farhani
Snake species identification using image processing technique / Nur Farhani Azmi
title Snake species identification using image processing technique / Nur Farhani Azmi
title_full Snake species identification using image processing technique / Nur Farhani Azmi
title_fullStr Snake species identification using image processing technique / Nur Farhani Azmi
title_full_unstemmed Snake species identification using image processing technique / Nur Farhani Azmi
title_short Snake species identification using image processing technique / Nur Farhani Azmi
title_sort snake species identification using image processing technique / nur farhani azmi
topic Android
Neural networks (Computer science)
url https://ir.uitm.edu.my/id/eprint/31578/