论文标题

LASSR:有效的植物疾病诊断的超分辨率方法

LASSR: Effective Super-Resolution Method for Plant Disease Diagnosis

论文作者

Cap, Quan Huu, Tani, Hiroki, Uga, Hiroyuki, Kagiwada, Satoshi, Iyatomi, Hitoshi

论文摘要

高分辨率培训数据的收集对于建立强大的植物性诊断系统至关重要,因为这些数据对诊断性能有重大影响。但是,它们很难获得,并且在实践中并不总是可用的。可以应用基于深度学习的技术,尤其是生成的对抗网络(GAN),可用于生成高质量的超分辨率图像,但是这些方法通常会产生意外的伪像,从而降低诊断性能。在本文中,我们提出了一种新型的人为抑制超分辨率方法,该方法是专门设计用于诊断叶片疾病的,称为叶子伪影超级分辨率(LASSR)。由于其自身的伪像去除模块可在相当大的程度上检测和抑制工件,因此与最先进的Esrgan模型相比,LASSR可以产生更令人愉悦的高质量图像。基于五级黄瓜疾病(包括健康的歧视模型)的实验表明,与基线相比,LASSR产生的数据的训练显着提高了未见测试数据集中的性能近22%,并且我们的方法比由ESRGAN生成的图像培训的模型要好得多2%。

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 artifact-suppression 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 nearly 22% compared with the baseline, and that our approach is more than 2% better than a model trained with images generated by ESRGAN.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源