Mutia, Kim Brian, author.
MediLeaf : a Herbal Plant Classification System using Image Processing / Kim Brian Mutia, Keysha R. Pareja, and Carla Angelica A. Maghirang. - Rosario, Cavite : Cavite State University-CCAT Campus, 2019. - xiii, 76 leaves : illustrations ; 28 cm
An Undergraduate Thesis (BSCos) -- Cavite State University-CCAT Campus, 2019.
Includes bibliographical references and appendices.
MUTIA, KIM BRIAN, PAREJA, KEYSHA R., MAGHIRANG, CARLA ANGELICA R. MediLeaf: A Herbal Plant Classification System Using Image Processing. Cavite State University-CCAT, Rosario, Cavite. May 2019. Adviser: Prof. Christopher G. Estonilo.
The study was conducted from August 2018 to April 2019 at the Department of Computer Studies of Cavite State University-CCAT. The general objective of the study was to assist users in identifying the type of herbal plant using computer vision. Specifically, the study aimed to: 1) design and develop the system of identifying the type of herbal plant which is capable of importing and capturing leaf image, and identifying the type of imported or captured leaf image; 2) providing the information and benefits of the herbal plant; 3) evaluate the system in order to determine if it complies with the ISO- IE 25010 software evaluation standards; and prepare an implementation plan for the deployment of the system in the Department of Computer Studies of CvSU-CCAT.
The system analysis and design of MediLeaf applied the rapid application development or RAD software development model which was composed of requirement analysis, user design (prototype, test, refine), construction, and cutover.
The system was evaluated by five (5) IT experts and ten (10) general end-user in the campus. It gained a mean of 4.49 and described as very satisfactory for the system developer respondents. On the other hand, it gained a mean of 4.58 and described as excellent for the end-users.
In English text.
Herb species recognition.
Computer vision.
Plant identification.
Image processing -- Digital techniques.
Computer graphics.
UM TA 1637 / M88 2019
MediLeaf : a Herbal Plant Classification System using Image Processing / Kim Brian Mutia, Keysha R. Pareja, and Carla Angelica A. Maghirang. - Rosario, Cavite : Cavite State University-CCAT Campus, 2019. - xiii, 76 leaves : illustrations ; 28 cm
An Undergraduate Thesis (BSCos) -- Cavite State University-CCAT Campus, 2019.
Includes bibliographical references and appendices.
MUTIA, KIM BRIAN, PAREJA, KEYSHA R., MAGHIRANG, CARLA ANGELICA R. MediLeaf: A Herbal Plant Classification System Using Image Processing. Cavite State University-CCAT, Rosario, Cavite. May 2019. Adviser: Prof. Christopher G. Estonilo.
The study was conducted from August 2018 to April 2019 at the Department of Computer Studies of Cavite State University-CCAT. The general objective of the study was to assist users in identifying the type of herbal plant using computer vision. Specifically, the study aimed to: 1) design and develop the system of identifying the type of herbal plant which is capable of importing and capturing leaf image, and identifying the type of imported or captured leaf image; 2) providing the information and benefits of the herbal plant; 3) evaluate the system in order to determine if it complies with the ISO- IE 25010 software evaluation standards; and prepare an implementation plan for the deployment of the system in the Department of Computer Studies of CvSU-CCAT.
The system analysis and design of MediLeaf applied the rapid application development or RAD software development model which was composed of requirement analysis, user design (prototype, test, refine), construction, and cutover.
The system was evaluated by five (5) IT experts and ten (10) general end-user in the campus. It gained a mean of 4.49 and described as very satisfactory for the system developer respondents. On the other hand, it gained a mean of 4.58 and described as excellent for the end-users.
In English text.
Herb species recognition.
Computer vision.
Plant identification.
Image processing -- Digital techniques.
Computer graphics.
UM TA 1637 / M88 2019