从实验室到田间:卷积神经网络在作物病害检测中的推广实证研究

Felipe A. Guth, S. Ward, K. McDonnell
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引用次数: 3

摘要

由于复杂的特征抽象和学习能力,cnn已经成为图像分类任务中最成功的机器学习算法。这项工作的目的是评估卷积神经网络(cnn)在提取潜在复杂特征和识别这些模式方面的潜力,从而实现检测健康和患病作物的任务。使用来自受控实验室条件和真实现场环境的图像,在不同的训练和测试场景下评估了这些算法的泛化性。结果表明,当在训练中提供足够的数据可变性,在测试中使用具有相似条件的图像时,深度学习架构提供了超过90%的准确结果。相比之下,相同的架构无法将训练的准确性推广到检测新的未见过的图像,这些图像不是在与训练集相同的设置中提取的,在这种情况下,交付的一般准确率约为50%。用于疾病检测的实际自动化支持系统的部署取决于为训练cnn提供强大的数据集,这些数据集考虑了在全球不同田地中遇到的许多作物种植环境中发现的光谱变化条件。
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From Lab to Field: An Empirical Study on the Generalization of Convolutional Neural Networks towards Crop Disease Detection
Due to complex feature abstraction and learning power, CNNs have been the most successful machine learning algorithms for image classification tasks. The objective of this work was to evaluate the potential of convolutional neural networks (CNNs) for extracting underlying complex features and recognize these patterns towards the task of detecting healthy and diseased crop plants. The generalization of these algorithms was assessed on different situations of training and testing scenarios using images from controlled lab conditions and real field environments. Results have shown that when presented with sufficient data variability in training, englobing images with similar conditions faced in testing, the deep learning architectures delivered accurate results of over 90%. In contrast, the same architectures were not able to generalize the accuracy of training towards the detection of new unseen images that were not extracted in the same settings as the ones from the training set, delivering, in this case, a general accuracy of around 50%. The deployment of practical automated support systems for disease detection depends on the provision of robust datasets for training CNNs which contemplate the spectral variability conditions found in numerous crop cultivation environments encountered in diverse field sites across the globe.
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