基于深度学习的新油棕果穗检测

Harmiansyah, E P Sembiring, E T Oviana and Supriyanto
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引用次数: 0

摘要

印度尼西亚油棕种植园的鲜果串和毛棕榈油(CPO)生产率受到棕榈油加工厂所接受的成熟度优良且均匀的果实质量的影响。通过果实成熟度标准(即馏分 00、馏分 1、馏分 3 和馏分 4),采收过程中产生的果实质量具有一致性,因此需要基于深度学习的成熟度检测,预先训练的 YOLOv5 模型能够检测新油棕果穗的成熟度。目的是开发基于视觉图像的深度学习成熟度检测模型,并通过对新油棕果穗的成熟度进行分类来分析深度学习算法的性能。该方法收集了一个包含 4180 幅图像的新油棕果穗数据集。收集到的数据集将使用 Roboflow 进行标注,因此标注结果将使用深度学习脚本进行训练、验证和测试。针对检测新鲜果穗(FFB)成熟度的数据所获得的结果显示,YOLOv5 模型表现出强劲的性能,测试准确率达到 72.5%,属于公平注释类别。这些结果表明,所创建和使用的系统运行良好。
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Detection of new oil palm fruit bunches based on deep learning
The Indonesian oil palm plantation experiences a production rate of fresh fruit bunches and crude palm oil (CPO) influenced by the quality of fruits with excellent and uniform maturity accepted by the palm oil processing factory. The uniformity of fruit quality produced from the harvesting process through fruit maturity criteria, namely fractions 00, fraction 1, fraction 3, and fraction 4, necessitates the need for maturity detection based on deep learning with a pre-trained YOLOv5 model capable of detecting the maturity of new oil palm fruit bunches. The aim is to develop a deep learning-based maturity detection model based on visual images and analyse the deep learning algorithm’s performance by classifying the maturity level of new oil palm fruit bunches. The method collects a dataset of new oil palm fruit bunches with 4180 images. The collected dataset will be annotated with Roboflow, so the annotation results will undergo training, validation, and testing processes using the deep learning script. The result obtained for the data found to detect the ripeness levels of Fresh Fruit Bunches (FFB), shows that the YOLOv5 model demonstrates strong performance with an accuracy reaching 72.5% in testing, which falls into the category of fair annotation. These results indicate that the system created and used is functioning well.
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