TY - GEN
T1 - Harnessing YOLO for Loose Fruits Detection
T2 - 2025 International Conference on Advancement in Data Science, E-learning and Information System, ICADEIS 2025
AU - Warni, Elly
AU - Indrabayu,
AU - Achmad, Andani
AU - Syahsir, Aldilah Rezki Rhamadani
N1 - Publisher Copyright:
© 2025 IEEE.
PY - 2025
Y1 - 2025
N2 - This study explores the use of the YOLOv5 algorithm to detect loose fruits palm oil in plantations, improve collection efficiency, and reduce reliance on manual labor. Loose fruits have high economic value due to their oil content, but they are often not collected, resulting in financial losses and the growth of weeds around oil palm trees. Conventional manual methods are often ineffective; thus, automatic detection is required. The dataset comprises 525 images of loose fruits, covering complex conditions on plantations, and secondary data from Roboflow, including nontarget objects, such as rocks and dry leaves, to train the model to accurately distinguish loose fruits. During training, several parameters were optimized: batch size, learning rate, optimizer type, weight decay, and momentum, which showed that small batch sizes provided higher mAP50 values, whereas large batches increased mAP50:95, indicating the ability to detect objects at higher levels of complexity. Testing in a scenario with loose fruits clearly visible and partially covered with leaves or grass showed that YOLOv5 could detect loose fruits well despite some constraints in the obstructed environment. The results of this study show that, with appropriate parameter settings, YOLOv5 can be a reliable basis for automated loose fruit collection systems, potentially improving operational efficiency in oil palm plantations and contributing to the development of automation in the agricultural sector.
AB - This study explores the use of the YOLOv5 algorithm to detect loose fruits palm oil in plantations, improve collection efficiency, and reduce reliance on manual labor. Loose fruits have high economic value due to their oil content, but they are often not collected, resulting in financial losses and the growth of weeds around oil palm trees. Conventional manual methods are often ineffective; thus, automatic detection is required. The dataset comprises 525 images of loose fruits, covering complex conditions on plantations, and secondary data from Roboflow, including nontarget objects, such as rocks and dry leaves, to train the model to accurately distinguish loose fruits. During training, several parameters were optimized: batch size, learning rate, optimizer type, weight decay, and momentum, which showed that small batch sizes provided higher mAP50 values, whereas large batches increased mAP50:95, indicating the ability to detect objects at higher levels of complexity. Testing in a scenario with loose fruits clearly visible and partially covered with leaves or grass showed that YOLOv5 could detect loose fruits well despite some constraints in the obstructed environment. The results of this study show that, with appropriate parameter settings, YOLOv5 can be a reliable basis for automated loose fruit collection systems, potentially improving operational efficiency in oil palm plantations and contributing to the development of automation in the agricultural sector.
KW - Deep Learning
KW - Loose Fruits
KW - Object Detection
KW - Palm Oil
KW - YOLO
UR - https://www.scopus.com/pages/publications/105002274876
U2 - 10.1109/ICADEIS65852.2025.10933352
DO - 10.1109/ICADEIS65852.2025.10933352
M3 - Conference contribution
AN - SCOPUS:105002274876
T3 - ICADEIS 2025 - 2025 International Conference on Advancement in Data Science, E-learning and Information System: Integrating Data Science and Information System, Proceeding
BT - ICADEIS 2025 - 2025 International Conference on Advancement in Data Science, E-learning and Information System
PB - Institute of Electrical and Electronics Engineers Inc.
Y2 - 3 February 2025 through 4 February 2025
ER -