Super-Resolution for Practical Automated Plant Disease Diagnosis System

Q. H. Cap, Hiroki Tani, H. Uga, S. Kagiwada, H. Iyatomi
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引用次数: 7

Abstract

Automated plant diagnosis using images taken from a distance is often insufficient in resolution and degrades diagnostic accuracy since the important external characteristics of symptoms are lost. In this paper, we first propose an effective preprocessing method for improving the performance of automated plant disease diagnosis systems using super-resolution techniques. We investigate the efficiency of two different super-resolution methods by comparing the disease diagnostic performance on the practical original high-resolution, low-resolution, and super-resolved cucumber images. Our method generates super-resolved images that look very close to natural images with 4 × upscaling factors and is capable of recovering the lost detailed symptoms, largely boosting the diagnostic performance. Our model improves the disease classification accuracy by 26.9% over the bicubic interpolation method of 65.6% and shows a small gap (3% lower) between the original result of 95.5%.
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实用植物病害自动诊断系统的超分辨率
使用从远处拍摄的图像进行自动植物诊断通常分辨率不足,并且由于失去了症状的重要外部特征而降低了诊断准确性。在本文中,我们首先提出了一种有效的预处理方法,以提高使用超分辨率技术的植物病害自动诊断系统的性能。通过比较高分辨率、低分辨率和超分辨率黄瓜图像的疾病诊断性能,研究了两种不同的超分辨率方法的效率。我们的方法生成的超分辨率图像看起来非常接近自然图像,具有4倍的放大因子,并且能够恢复丢失的详细症状,大大提高了诊断性能。我们的模型在双三次插值法65.6%的基础上提高了26.9%的疾病分类准确率,与原始结果95.5%有很小的差距(降低了3%)。
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