Enhancing rangeland weed detection through convolutional neural networks and transfer learning

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Abstract

The detection of weed species in rangeland environments is a challenging task due to various factors such as dense, variable species vegetation, ocular occlusion, and a wide variety of plant morphology. Most research in weed detection, however, focuses on croplands. This research addresses the need for accurate rangeland weed detection models by leveraging convolutional neural network (CNN) models enhanced with transfer learning applied to the DeepWeeds data set taken in situ in regional North Eastern Australia. It investigates the effectiveness of transfer learning across seven popular models, utilizing data augmentation and fine-tuning. The performance of these models was evaluated using accuracy metrics and compared against each other. The results demonstrated that transfer learning, coupled with fine tuning, could be a viable solution for generating efficient weed plant detection models with lower demands on computational resources and smaller datasets, despite the challenging conditions of rangeland environments. EfficientNetV2B1 had the highest classification accuracy of 94.2 ​%, and lowest training times. Moreover, high levels of accuracy were also achieved using InceptionV3, VGG16, and Densenet121, albeit with a training time penalty. This research provides insights into the performance of CNN models in challenging rangeland environments, demonstrates the potential of using transfer learning to enhance weed detection models, and underscores the significance of model selection in agricultural applications of CNNs.

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通过卷积神经网络和迁移学习增强牧场杂草探测能力
牧场环境中杂草种类的检测是一项极具挑战性的任务,这是由多种因素造成的,如植被茂密、物种多变、视觉遮挡以及植物形态的多样性。然而,大多数杂草检测研究都集中在耕地上。本研究利用卷积神经网络 (CNN) 模型,并将其应用于在澳大利亚东北部地区实地采集的 DeepWeeds 数据集,从而满足对精确牧场杂草检测模型的需求。该研究利用数据增强和微调,调查了迁移学习在七种流行模型中的有效性。使用准确度指标对这些模型的性能进行了评估,并相互进行了比较。结果表明,尽管牧场环境条件具有挑战性,但迁移学习与微调相结合,可以成为生成高效杂草植物检测模型的可行解决方案,而且对计算资源的要求较低,数据集较小。EfficientNetV2B1 的分类准确率最高,达到 94.2%,训练时间最短。此外,InceptionV3、VGG16 和 Densenet121 也达到了较高的分类准确率,但训练时间较长。这项研究深入探讨了 CNN 模型在具有挑战性的牧场环境中的表现,证明了利用迁移学习增强杂草检测模型的潜力,并强调了在 CNN 的农业应用中模型选择的重要性。
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