LeafGAN: An Effective Data Augmentation Method for Practical Plant
Disease Diagnosis
- URL: http://arxiv.org/abs/2002.10100v2
- Date: Fri, 27 Nov 2020 13:34:44 GMT
- Title: LeafGAN: An Effective Data Augmentation Method for Practical Plant
Disease Diagnosis
- Authors: Quan Huu Cap, Hiroyuki Uga, Satoshi Kagiwada, and Hitoshi Iyatomi
- Abstract summary: LeafGAN generates a wide variety of diseased images via transformation from healthy images.
Thanks to its own attention mechanism, our model can transform only relevant areas from images with a variety of backgrounds.
- Score: 2.449909275410288
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Many applications for the automated diagnosis of plant disease have been
developed based on the success of deep learning techniques. However, these
applications often suffer from overfitting, and the diagnostic performance is
drastically decreased when used on test datasets from new environments. In this
paper, we propose LeafGAN, a novel image-to-image translation system with own
attention mechanism. LeafGAN generates a wide variety of diseased images via
transformation from healthy images, as a data augmentation tool for improving
the performance of plant disease diagnosis. Thanks to its own attention
mechanism, our model can transform only relevant areas from images with a
variety of backgrounds, thus enriching the versatility of the training images.
Experiments with five-class cucumber disease classification show that data
augmentation with vanilla CycleGAN cannot help to improve the generalization,
i.e., disease diagnostic performance increased by only 0.7% from the baseline.
In contrast, LeafGAN boosted the diagnostic performance by 7.4%. We also
visually confirmed the generated images by our LeafGAN were much better quality
and more convincing than those generated by vanilla CycleGAN. The code is
available publicly at: https://github.com/IyatomiLab/LeafGAN.
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