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首页> 外文期刊>Frontiers in Plant Science >A Mobile-Based Deep Learning Model for Cassava Disease Diagnosis
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A Mobile-Based Deep Learning Model for Cassava Disease Diagnosis

机译:基于移动设备的木薯疾病诊断深度学习模型

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Convolutional neural network (CNN) models have the potential to improve plant disease phenotyping where the standard approach is visual diagnostics requiring specialized training. In scenarios where a CNN is deployed on mobile devices, models are presented with new challenges due to lighting and orientation. It is essential for model assessment to be conducted in real world conditions if such models are to be reliably integrated with computer vision products for plant disease phenotyping. We train a CNN object detection model to identify foliar symptoms of diseases in cassava ( Manihot esculenta Crantz). We then deploy the model in a mobile app and test its performance on mobile images and video of 720 diseased leaflets in an agricultural field in Tanzania. Within each disease category we test two levels of severity of symptoms-mild and pronounced, to assess the model performance for early detection of symptoms. In both severities we see a decrease in performance for real world images and video as measured with the F-1 score. The F-1 score dropped by 32% for pronounced symptoms in real world images (the closest data to the training data) due to a decrease in model recall. If the potential of mobile CNN models are to be realized our data suggest it is crucial to consider tuning recall in order to achieve the desired performance in real world settings. In addition, the varied performance related to different input data (image or video) is an important consideration for design in real world applications.
机译:卷积神经网络(CNN)模型具有改善植物病害表型的潜力,其中标准方法是需要专门培训的视觉诊断。在将CNN部署在移动设备上的情况下,由于灯光和方向,模型会面临新的挑战。如果要将模型与计算机视觉产品可靠地集成在一起以进行植物病害表型分析,那么在现实世界中进行模型评估至关重要。我们训练了一个CNN对象检测模型,以识别木薯(Manihot esculenta Crantz)中的叶面症状。然后,我们将模型部署到移动应用程序中,并在坦桑尼亚农业领域中720张患病传单的移动图像和视频上测试其性能。在每种疾病类别中,我们测试两种严重程度的症状-轻度和明显,以评估模型性能以及早发现症状。在两种严重程度下,我们都可以看到以F-1分数衡量的真实图像和视频的性能下降。由于模型召回率的降低,现实世界图像(与训练数据最接近的数据)中明显症状的F-1分数下降了32%。如果要实现移动CNN模型的潜力,我们的数据表明,至关重要的是考虑调整召回率,以便在现实环境中获得理想的性能。另外,与不同输入数据(图像或视频)相关的性能变化是现实应用中设计的重要考虑因素。

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