树枝上橄榄检测的深度学习模型对比分析

E. Kahya, Y. Aslan
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摘要

未来,深度学习在农业领域的整合将为推进可持续农业实践、精准农业和改进决策带来巨大潜力。近年来,随着图像处理和人工智能技术的快速发展,深度学习已开始在识别农业害虫和优化农产品营销方面发挥重要作用。然而,深度学习在农业领域的广泛应用还面临着数据质量、模型可扩展性和地域限制等方面的挑战。为了提高数据集的质量,确保物体检测模型的训练更加可靠,我们开展了这项关于 Olive 的研究。根据研究中使用的 YOLOv7 的训练过程结果,可以得出结论:其特点是损失值不断减少,并显示出模型正确检测物体能力的提高。另一个模型 YOLOv8l 的学习能力更强,学习速度更快。我们用各种指标对这两个模型的性能进行了评估,结果表明 YOLOv8l 的精确度、召回率和 mAP 值都更高。研究人员强调,YOLOv8l 即使在epoch 数量较少的情况下也能表现出较高的性能,尤其是在时间和计算资源有限的情况下,YOLOv8l 更受青睐。据测定,YOLOv7 的检测置信度范围较宽,但在检测置信度较低的数据时会遇到困难。据观察,YOLOv8l 在置信度较高的情况下能进行更稳定、更可靠的检测。与其他模型相比,"YOLOv8l "模型的度量数据更高。YOLOv5l模型的F1得分为92.337%,精确度为96.568%,召回率%88,462,mAP@0.5:0.65,得分最高,为94.608%。这项关于基于深度学习的物体检测模型的研究表明,与 YOLOv7 相比,YOLOv8l 表现出更优越的性能,是农业应用中更可靠的选择。
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Comparative Analysis of Deep Learning Models for Olive Detection on the Branch
The future of deep learning integration in agriculture holds great potential for advancing sustainable agricultural practices, precision agriculture and improved decision-making. With the rapid development of image processing and artificial intelligence technologies in recent years, deep learning has begun to play a major role in identifying agricultural pests and optimizing agricultural product marketing. However, there are challenges related to data quality, model scalability, and geographical limitations for widespread adoption of deep learning in agriculture. This study on Olive was conducted to improve the quality of the data set and to ensure more reliable training of object detection models. According to the result of the training process of YOLOv7 used in the study, it was concluded that it was characterized by decreasing loss values and showed an increase in the model's ability to detect objects correctly. It was observed that the other model, YOLOv8l, had a more effective learning capacity and a tendency to learn faster. The performance of both models was evaluated with various metrics, and it was determined that YOLOv8l had higher Precision, Recall, and mAP values. It was emphasized that YOLOv8l showed high performance even in low epoch numbers and can be preferred especially in cases where time and computational resources were limited. It was determined that YOLOv7 made detections in a wide confidence range, but had difficulty in detections with low confidence scores. It was observed that YOLOv8l made more stable and reliable detections with higher confidence scores. The metric data of the "YOLOv8l" model was found to be higher compared to other models. The F1 score of the YOLOv5l model was 92.337%, precision 96.568%, recall %88,462,mAP@0.5:0.65 value gave the highest score with 94.608%. This research on deep learning-based object detection models indicated that YOLOv8l showed superior performance compared to YOLOv7 and was a more reliable option for agricultural applications.
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Comparative Analysis of Deep Learning Models for Olive Detection on the Branch
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