Graduate School of Environmental and Life Science, Okayama University, Okayama, 700-8530 Japan.
Graduate School of Agriculture, Kyoto University, Kyoto, 606-8502 Japan.
Plant Cell Physiol. 2020 Dec 23;61(11):1967-1973. doi: 10.1093/pcp/pcaa111.
Recent rapid progress in deep neural network techniques has allowed recognition and classification of various objects, often exceeding the performance of the human eye. In plant biology and crop sciences, some deep neural network frameworks have been applied mainly for effective and rapid phenotyping. In this study, beyond simple optimizations of phenotyping, we propose an application of deep neural networks to make an image-based internal disorder diagnosis that is hard even for experts, and to visualize the reasons behind each diagnosis to provide biological interpretations. Here, we exemplified classification of calyx-end cracking in persimmon fruit by using five convolutional neural network models with various layer structures and examined potential analytical options involved in the diagnostic qualities. With 3,173 visible RGB images from the fruit apex side, the neural networks successfully made the binary classification of each degree of disorder, with up to 90% accuracy. Furthermore, feature visualizations, such as Grad-CAM and LRP, visualize the regions of the image that contribute to the diagnosis. They suggest that specific patterns of color unevenness, such as in the fruit peripheral area, can be indexes of calyx-end cracking. These results not only provided novel insights into indexes of fruit internal disorders but also proposed the potential applicability of deep neural networks in plant biology.
近年来,深度神经网络技术的快速发展使得对各种物体的识别和分类变得非常容易,其性能常常超过人类肉眼的水平。在植物生物学和作物科学领域,一些深度神经网络框架主要应用于实现高效、快速的表型分析。在这项研究中,我们提出了将深度神经网络应用于基于图像的内部紊乱诊断,这不仅超越了简单的表型优化,还可以对即使是专家也难以诊断的问题进行诊断,并对每个诊断的原因进行可视化,以提供生物学解释。在这里,我们通过使用具有不同层结构的五个卷积神经网络模型,对柿子果实的萼片端开裂进行了分类,并检查了诊断质量所涉及的潜在分析选项。利用来自果实顶端的 3173 张可见 RGB 图像,神经网络成功地对每个紊乱程度进行了二进制分类,准确率高达 90%。此外,特征可视化,如 Grad-CAM 和 LRP,可以对有助于诊断的图像区域进行可视化。它们表明,果实周边区域的颜色不均匀等特定模式可以作为萼片端开裂的指标。这些结果不仅为果实内部紊乱的指标提供了新的见解,还提出了深度神经网络在植物生物学中的潜在应用。