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http://dx.doi.org/10.12791/KSBEC.2022.31.3.255

Strawberry Pests and Diseases Detection Technique Optimized for Symptoms Using Deep Learning Algorithm  

Choi, Young-Woo (Department of Smartfarm, Graduate School of Gyeongsang National University)
Kim, Na-eun (Department of Bio-Systems Engineering, Graduate School of Gyeongsang National University)
Paudel, Bhola (Department of Bio-Systems Engineering, Graduate School of Gyeongsang National University)
Kim, Hyeon-tae (Department of Bio-Industrial Machinery Engineering, Gyeongsang National University (Institute of Smart Farm))
Publication Information
Journal of Bio-Environment Control / v.31, no.3, 2022 , pp. 255-260 More about this Journal
Abstract
This study aimed to develop a service model that uses a deep learning algorithm for detecting diseases and pests in strawberries through image data. In addition, the pest detection performance of deep learning models was further improved by proposing segmented image data sets specialized in disease and pest symptoms. The CNN-based YOLO deep learning model was selected to enhance the existing R-CNN-based model's slow learning speed and inference speed. A general image data set and a proposed segmented image dataset was prepared to train the pest and disease detection model. When the deep learning model was trained with the general training data set, the pest detection rate was 81.35%, and the pest detection reliability was 73.35%. On the other hand, when the deep learning model was trained with the segmented image dataset, the pest detection rate increased to 91.93%, and detection reliability was increased to 83.41%. This study concludes with the possibility of improving the performance of the deep learning model by using a segmented image dataset instead of a general image dataset.
Keywords
big data; CNN; data augmentation; smart farm; YOLO;
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