TY - JOUR
T1 - Deep Learning Predicts Rapid Over-softening and Shelf Life in Persimmon Fruits
AU - Suzuki, Maria
AU - Masuda, Kanae
AU - Asakuma, Hideaki
AU - Takeshita, Kouki
AU - Baba, Kohei
AU - Kubo, Yasutaka
AU - Ushijima, Koichiro
AU - Uchida, Seiichi
AU - Akagi, Takashi
N1 - Funding Information:
Received; July 7, 2021. Accepted; March 14, 2022. First Published Online in JST AGE on May 25, 2022. This work was supported by PRESTO from Japan Science and Technology Agency (JST) [JPMJPR20Q1] to T.A., Grant?in?Aid for Scientific Research on Innovative Areas from JSPS [19H04862] to T.A. and Grant?in?Aid for JSPS Fellows for [19J23361] to K.M, JSPS KAKENHI [18H02199] to T.A., and [JP16H06280] to S.U. * Corresponding author (E?mail: takashia@okayama?u.ac.jp). ** These two authors contributed equally to this work.
Publisher Copyright:
© 2022 The Japanese Society for Horticultural Science (JSHS), All rights reserved.
PY - 2022
Y1 - 2022
N2 - In contrast to the progress in the research on physiological disorders relating to shelf life in fruit crops, it has been difficult to non-destructively predict their occurrence. Recent high-tech instruments have gradually enabled non-destructive predictions for various disorders in some crops, while there are still issues in terms of efficiency and costs. Here, we propose application of a deep neural network (or simply deep learning) to simple RGB images to predict a severe fruit disorder in persimmon, rapid over-softening. With 1,080 RGB images of ‘Soshu’ persimmon fruits, three convolutional neural networks (CNN) were examined to predict rapid over-softened fruits with a binary classification and the date to fruit softening. All of the examined CNN models worked successfully for binary classification of the rapid over-softened fruits and the controls with > 80% accuracy using multiple criteria. Furthermore, the prediction values (or confidence) in the binary classification were correlated to the date to fruit softening. Although the features for classification by deep learning have been thought to be in a black box by conventional standards, recent feature visualization methods (or “explainable” deep learning) has allowed identification of the relevant regions in the original images. We applied Grad-CAM, Guided backpropagation, and layer-wise relevance propagation (LRP), to find early symptoms for CNNs classification of rapid over-softened fruits. The focus on the relevant regions tended to be on color unevenness on the surface of the fruit, especially in the peripheral regions. These results suggest that deep learning frameworks could potentially provide new insights into early physiological symptoms of which researchers are unaware.
AB - In contrast to the progress in the research on physiological disorders relating to shelf life in fruit crops, it has been difficult to non-destructively predict their occurrence. Recent high-tech instruments have gradually enabled non-destructive predictions for various disorders in some crops, while there are still issues in terms of efficiency and costs. Here, we propose application of a deep neural network (or simply deep learning) to simple RGB images to predict a severe fruit disorder in persimmon, rapid over-softening. With 1,080 RGB images of ‘Soshu’ persimmon fruits, three convolutional neural networks (CNN) were examined to predict rapid over-softened fruits with a binary classification and the date to fruit softening. All of the examined CNN models worked successfully for binary classification of the rapid over-softened fruits and the controls with > 80% accuracy using multiple criteria. Furthermore, the prediction values (or confidence) in the binary classification were correlated to the date to fruit softening. Although the features for classification by deep learning have been thought to be in a black box by conventional standards, recent feature visualization methods (or “explainable” deep learning) has allowed identification of the relevant regions in the original images. We applied Grad-CAM, Guided backpropagation, and layer-wise relevance propagation (LRP), to find early symptoms for CNNs classification of rapid over-softened fruits. The focus on the relevant regions tended to be on color unevenness on the surface of the fruit, especially in the peripheral regions. These results suggest that deep learning frameworks could potentially provide new insights into early physiological symptoms of which researchers are unaware.
KW - AI
KW - classification
KW - explainable deep learning
KW - internal disorder
KW - ripening
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U2 - 10.2503/hortj.UTD-323
DO - 10.2503/hortj.UTD-323
M3 - Article
AN - SCOPUS:85134579054
SN - 2189-0102
VL - 91
SP - 408
EP - 415
JO - Horticulture Journal
JF - Horticulture Journal
IS - 3
ER -