基于实用图像的植物病害诊断关键区域获取训练

Kaito Odagiri, Shogo Shibuya, Q. H. Cap, H. Iyatomi
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引用次数: 0

摘要

利用图像对植物病害进行自动诊断是一项精细的任务,而且病害症状往往是模糊且高度可变的。已知对显示疾病症状(如一片或多片叶子)的感兴趣区域(ROI)进行预提取对提高准确性具有一定的影响。然而,在运行时提取ROI非常耗时,导致系统可用性问题。本文提出了一种新的训练方法——关键区域获取训练(KAAT)。KAAT减少了ROI提取前后图像之间预测结果的差异。通过学习将模型的注意力引导到ROI上,KAAT有助于提高诊断性能,而不会牺牲诊断期间的执行时间。在评估中,我们分别使用不同田地采集的77K和9K黄瓜叶片图像进行训练和测试,进行了9类诊断任务(8种疾病和健康)。所提出的KAAT在不增加执行时间的情况下,将宏f1的诊断准确率提高了3.8%,微精确性提高了2.0%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Key Area Acquisition Training for Practical Image-based Plant Disease Diagnosis
Automatic diagnosis of plant diseases using images is a fine-grained task, and disease symptoms are often ambiguous and highly variable. Pre-extraction of the region of interest (ROI) exhibiting disease symptoms (such as one or more leaves) is known to have a certain effect on improving accuracy. However, the ROI extraction at runtime is time-consuming, resulting in issues of system usability. This paper proposes a new training method called key area acquisition training (KAAT). KAAT reduces the variation in prediction results between images before and after the extraction of the ROI. By directing the model’s attention to the ROI through learning, KAAT contributes to improved diagnostic performance without sacrificing execution time during diagnosis. In the evaluation, we conducted nine class diagnosis task (eight diseases and healthy) using 77K and 9K images of cucumber leaves (collected from different fields) for training and testing, respectively. The proposed KAAT improved diagnostic accuracy by 3.8% in macro-F1 and 2.0% in micro accuracy without increasing execution time.
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