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Convolutional Neural Networks for Automatic Classification of Diseased Leaves: The Impact of Dataset Size and Fine-Tuning

机译:污染叶片自动分类的卷积神经网络:数据集大小和微调的影响

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For agricultural productivity, one of the major concerns is the early detection of diseases for their crops. Recently, some researchers have begun to explore Convolutional Neural Networks (CNNs) in agricultural field for leaves diseases identification. A CNN is a category of deep artificial neural networks that has demonstrated great success in computer vision applications, such as video and image analysis. However, their drawbacks are the demand of huge quantity of data with a wide range of conditions, as well as a carefully fine-tuning to work properly. This work explores and compares the most outstanding five CNNs architectures to determine their ability to correctly classify a leaf image as healthy and unhealthy. Experimental tests are performed referring to an unbalanced and small dataset composed by healthy and diseased leaves. In order to achieve a high accuracy on the explored CNN models, a fine-tuning of their hyperparameters is performed. Furthermore, some variations are done on the raw dataset to increase the quality and variety of the leaves images. Preliminary results provide a point-of-view for selecting CNNs architectures for leaves diseases identification based on accuracy, precision, recall and Fl metrics. The comparison demonstrates that without considerably lengthening the training, ZFNet achieves a high accuracy and increases it by 10% after 50 K iterations being a suitable CNN model for identification of diseased leaves using datasets with a small variation, number of classes and dataset sizes.
机译:为了农业生产力,主要担忧之一是早期发现其作物的疾病。最近,一些研究人员已经开始探索农业领域的卷积神经网络(CNNS),用于留下疾病鉴定。 CNN是一类深度人工神经网络,在计算机视觉应用中表现出巨大的成功,例如视频和图像分析。然而,他们的缺点是具有广泛条件的大量数据的需求,以及仔细微调以正常工作。这项工作探讨并比较了最优秀的五个CNN架构,以确定他们正确将叶片图像正确分类为健康和不健康的能力。试验测试是指由健康和患病的叶子组成的不平衡和小型数据集进行。为了在探索的CNN模型上达到高精度,执行其超参数的微调。此外,在原始数据集上完成了一些变化,以提高叶片图像的质量和各种。初步结果为基于精度,精度,召回和流度和FL指标选择叶片疾病识别的CNNS架构提供了视图。比较表明,在不相当长的培训的情况下,ZFNET在50k迭代是使用具有小变化的数据集的合适的CNN模型,ZFNET在50 k迭代之后将其增加10%,以使用小变化,类别和数据集数量的数据集识别患病叶。

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