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Automatic late blight lesion recognition and severity quantification based on field imagery of diverse potato genotypes by deep learning

机译:深度学习基于各种马铃薯基因型现场图像的自动晚期枯萎病变识别与严重性定量

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The plant pathogen Phytophthora infestans causes the severe disease late blight in potato, which can result in huge yield loss for potato production. Automatic and accurate disease lesion segmentation enables fast evaluation of disease severity and assessment of disease progress. In tasks requiring computer vision, deep learning has recently gained tremendous success for image classification, object detection and semantic segmentation. To test whether we could extract late blight lesions from unstructured field environments based on high-resolution visual field images and deep learning algorithms, we collected similar to 500 field RGB images in a set of diverse potato genotypes with different disease severity (0%-70%), resulting in 2100 cropped images. 1600 of these cropped images were used as the dataset for training deep neural networks and 250 cropped images were randomly selected as the validation dataset. Finally, the developed model was tested on the remaining 250 cropped images. The results show that the values for intersection over union (IoU) of the classes background (leaf and soil) and disease lesion in the test dataset were 0.996 and 0.386, respectively. Furthermore, we established a linear relationship (R-2 = 0.655) between manual visual scores of late blight and the number of lesions detected by deep learning at the canopy level. We also showed that imbalance weights of lesion and background classes improved segmentation performance, and that fused masks based on the majority voting of the multiple masks enhanced the correlation with the visual disease scores. This study demonstrates the feasibility of using deep learning algorithms for disease lesion segmentation and severity evaluation based on proximal imagery, which could aid breeding for crop resistance in field environments, and also benefit precision farming. (C) 2021 Elsevier B.V. All rights reserved.
机译:植物病原体植物植物冬季患者导致马铃薯的严重疾病枯萎病,这可能导致马铃薯生产的巨大产量损失。自动和准确的疾病病变细分能够快速评估疾病严重程度和对疾病进展的评估。在需要计算机愿景的任务中,深度学习最近获得了图像分类,对象检测和语义细分的巨大成功。为了测试我们是否基于高分辨率视野图像和深度学习算法从非结构化现场环境中提取晚期枯萎病变,我们在一组不同疾病严重程度的各种不同的马铃薯基因型中收集了与500个磁场RGB图像类似(0%-70 %),导致2100个裁剪图像。这些裁剪图像中的1600被用作训练深度神经网络的数据集,并且将250个裁剪图像随机选择为验证数据集。最后,在剩余的250个裁剪图像上测试了开发的模型。结果表明,试验数据集中的类背景(叶片和土壤)和疾病病变的联盟(IOU)的交叉口值分别为0.996和0.386。此外,我们在手动视觉评分晚期枯萎之间建立了线性关系(R-2 = 0.655),并通过在树冠上深入检测到的病变数。我们还表明,Lesion和背景类别的不平衡重量改善了分割性能,并且基于多个掩模大多数投票的融合面具增强了与视觉疾病评分的相关性。本研究展示了基于近端图像使用深层学习算法和基于近端图像的严重程度评估的可行性,这可以帮助养殖场环境中的作物抗性,并利用精密养殖。 (c)2021 Elsevier B.v.保留所有权利。

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