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AOP: An Anti-overfitting Pretreatment for Practical Image-based Plant Diagnosis

机译:AOP:基于实际图像的植物诊断的反拟装备预处理

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In image-based plant diagnosis, clues related to diagnosis are often unclear, and the other factors such as image backgrounds often have a significant impact on the final decision. As a result, overfitting due to latent similarities in the dataset often occurs, and the diagnostic performance on real unseen data (e,g. images from other farms) is usually dropped significantly. However, this problem has not been sufficiently explored, since many systems have shown excellent diagnostic performance due to the bias caused by the similarities in the dataset. In this study, we investigate this problem with experiments using more than 50,000 images of cucumber leaves, and propose an anti-overfitting pretreatment (AOP) for realizing practical image-based plant diagnosis systems. The AOP detects the area of interest (leaf, fruit etc.) and performs brightness calibration as a preprocessing step. The experimental results demonstrate that our AOP can improve the accuracy of diagnosis for unknown test images from different farms by 12.2% in a practical setting.
机译:在基于图像的植物诊断中,与诊断有关的线索通常不明确,图像背景等其他因素往往对最终决定产生重大影响。结果,由于数据集中的潜在相似性而导致的过度装箱,以及真实看不见的数据上的诊断性能(E,G.来自其他农场的图像)通常会显着下降。然而,这个问题尚未充分探索,因为许多系统由于数据集中的相似性引起的偏差而显得出色的诊断性能。在这项研究中,我们通过使用超过50,000个黄瓜叶片图像的实验来研究这个问题,并提出了一种用于实现基于实际图像的植物诊断系统的防过拟合预处理(AOP)。 AOP检测感兴趣的区域(叶,水果等),并执行亮度校准作为预处理步骤。实验结果表明,我们的AOP可以在实际设置中提高不同农场未知测试图像的诊断准确性12.2%。

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