Data-driven mobile application for native trees using ai-identification/ Joshua A. Castillon, Cristopher S. Chan, Alliana Hira G. Cordero, Ken Vaness M. Fundales, and Angel Junine P. Peñalosa.--
Material type:
TextPublication details: Manila: Technological University of the Philippines, 2025.Description: xxiii, 197pages: 29cmContent type: - BTH QA 76.9 C37 2025
| Item type | Current library | Shelving location | Call number | Copy number | Status | Date due | Barcode |
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Bachelor's Thesis CIT
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TUP Manila Library | Thesis Section-2nd floor | BTH QA 76.9 C37 2025 (Browse shelf(Opens below)) | c.1 | Not for loan | BTH0006572 |
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Bachelor's thesis
College of Industrial Technology.-- Bachelor of engineering technology major in computer engineering technology: Technological University of the Philippines, 2025.
Includes bibliographic references and index.
The increasing loss of native tree species in urban environments, especially in
Metro Manila, underscores the urgent need for products that can provide new means to
access tools to raise awareness and identify and protect local flora. This study describes the
creation of a data-driven mobile application to identify five native trees from the
Philippines - Narra, Kamagong, Talisay, Banaba, and Ipil - using artificial intelligence-
based leaf image identification. Using the mobile application, users can accurately identify
trees and receive information on each tree species, including scientific names, ecological
preferences, and growth habits. The system was equipped with an intuitive interface that
includes a searchable tree database, as well as a map function to showcase important areas
in the Philippines with each tree species. Nevertheless, the identification model was
specifically trained only using native trees in and around the Arroceros Forest Park region,
thus limiting appropriate identification to only those species in that park. The AI
identification model includes a deep learning convolutional neural networks (CNN) trained
on a designated leaf image dataset that was curated, enhancing performance reliability. The
application was tested against a number of devices and Android versions, and the results
showed excellent functioning, responsive controls, and consistent behavior. Limitations
were the limitation to five tree species, and the identification accuracy was only relevant
to those in Arroceros. Testing was done against the software quality standards ISO/IEC
25010 and showed that the system’s accuracy, functionality, and usability were adequate.
This project is the start of an initiative for urban biodiversity by providing an object-based
and usable tool for native tree identification, as well as advocacy for tree conservation.
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