IJARP

International Journal of Advanced Research and Publications (2456-9992)

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Assessment And Development Of System For Fruit Identification Information

Volume 6 - Issue 5, May 2023 Edition
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Author(s)
Jovie M. Gallera
Keywords
Evaluation, fruit identification, information, innovative, system
Abstract
The study aimed to develop an innovative system that accurately identifies fruits and provides information about their nutritional value, seasonality, and origin. The Fruit Identification Information System was evaluated on its usability, effectiveness, functionality, and maintainability, resulting in an overall rating of 4.5 out of 5. The system's effectiveness, usability, and maintainability make it a valuable tool for farmers, researchers, and consumers in identifying and understanding fruits, showcasing the potential of technology to positively impact our lives. This study is a valuable tool that can aid farmers, researchers, and consumers in identifying and understanding fruits. The system's development and assessment showcase the potential of technology to develop innovative solutions that can positively impact various aspects of our lives."
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