Title Novel Fusion Technique for High-Performance Automated Crop Edge Detection in Smart Agriculture
Authors MARTÍNEZ, FATIMA BELÉN, ROMAINE, JAMES BRIAN, Johnson, P. , CARDONA RUÍZ, ADRIAN, MILLÁN GATA, PABLO
External publication No
Means IEEE Access
Scope Article
Nature Científica
JCR Quartile 2
SJR Quartile 1
Web https://www.scopus.com/inward/record.uri?eid=2-s2.0-85217018383&doi=10.1109%2fACCESS.2025.3536701&partnerID=40&md5=7df93a691530f568b9332aad81cddf67
Publication date 01/01/2025
ISI 001419142800016
Scopus Id 2-s2.0-85217018383
DOI 10.1109/ACCESS.2025.3536701
Abstract Optimising vegetable production systems is crucial for maintaining and enhancing agricultural productivity, particularly for crops like lettuce. Separating the crop from the background poses a significant challenge when using automated tools. To address this, a novel technique has been developed to automatically detect the vegetative area of lettuces, optimising time and eliminating subjectivity during crop inspections. The proposed deep learning model integrates the YOLOv10 object detector, the K-means classifier, and a segmentation method known as superpixel. This combination enables lettuce area identification using bounding box labels instead of contour labels during training, improving efficiency compared to other methods like YOLOv8 and Detectron2. Additionally, the combination of the YKMS method with YOLOv8 (YKMSV8) is evaluated, where YKMS serves as a label assistant. These methods are also used as benchmarks to compare the proposed approach. For the training of each methods, a custom database has been created using a low-cost, low-power custom IoT node deployed on a real farm to provide the most accurate data. Throughout the comparison, a custom metric is used to evaluate performance both in training and inference, balancing computational cost and area error, making it applicable in agriculture. Performance metric is associated with computational cost factor and accuracy factor whose value are respectively 65% and 35%, ensuring applicability for autonomous agricultural devices. Computational cost is prioritised to maintain battery life during extended campaigns. The results of the custom metric during inference indicated that the YKMSV8 method achieved the highest performance, followed by Detectron2, YOLOv8, and, lastly, YKMS. Regarding area error, YOLOv8 exhibited the lowest mean error, followed by Detectron2, while YKMSV8 and YKMS produced similar values. In terms of inference time, YKMSV8 was the most computationally efficient, followed by YOLOv8, YKMS, and, finally, Detectron2.
Keywords Crops; Accuracy; YOLO; Training; Computational efficiency; Object recognition; Labeling; Measurement; Biological system modeling; Costs; Computer vision; object detection; YOLOv8 segmentation; YOLOv10; superpixel; K-means; threshold; detectron2; smart agriculture
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