4.7 Article

LASSR: Effective super-resolution method for plant disease diagnosis

Journal

COMPUTERS AND ELECTRONICS IN AGRICULTURE
Volume 187, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.compag.2021.106271

Keywords

Cucumber plant diseases; Automated plant disease diagnosis; Super-resolution; Deep learning

Funding

  1. Ministry of Agriculture, Forestry and Fisheries (MAFF) Japan Commissioned project study on Development of pest diagnosis technology [JP17935051]
  2. Ministry of Education, Culture, Sports, Science and Technology of Japan [17K8033]

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The study proposes a high-quality image generation method for leaf disease diagnosis, which significantly improves diagnostic performance; experimental results show that the performance on an unseen test dataset is boosted by over 21% compared to the baseline model, and over 2% better than a model trained with images generated by ESRGAN.
The collection of high-resolution training data is crucial in building robust plant disease diagnosis systems, since such data have a significant impact on diagnostic performance. However, they are very difficult to obtain and are not always available in practice. Deep learning-based techniques, and particularly generative adversarial networks (GANs), can be applied to generate high-quality super-resolution images, but these methods often produce unexpected artifacts that can lower the diagnostic performance. In this paper, we propose a novel artifactsuppression super-resolution method that is specifically designed for diagnosing leaf disease, called Leaf Artifact-Suppression Super-Resolution (LASSR). Thanks to its own artifact removal module that detects and suppresses artifacts to a considerable extent, LASSR can generate much more pleasing, high-quality images compared to the state-of-the-art ESRGAN model. Experiments based on a five-class cucumber disease (including healthy) discrimination model show that training with data generated by LASSR significantly boosts the performance on an unseen test dataset by over 21% compared with the baseline, and that our approach is more than 2% better than a model trained with images generated by ESRGAN.

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