马铃薯叶病检测的迭代超分辨网络

P. V. Yeswanth, Sammeta Kushal, Garvit Tyagi, Molapally Tharun Kumar, S. Deivalakshmi, Sriram Prakash Ramasubramanian
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引用次数: 0

摘要

自古以来,由害虫、细菌、病毒和真菌引起的农业疾病造成了重大的粮食损失,需要引起全世界的重视。因此,尽早诊断作物病害可以显著防止产量损失,并增加经济价值。作物的病害可以通过仔细分析叶片、节或茎来确定。在这里,准确的疾病诊断通常取决于图像的分辨率。采用迭代超分辨率网络(ISNR)模型对低分辨率马铃薯叶片进行分析和病害识别。通过随机迭代去噪过程,ISNR通过图像间平移调整去噪扩散概率模型来实现超分辨率。所提出的ISNR模型使用可公开访问的PlantVillage数据集进行评估,其超分辨率因子为2、4和6。对于超分辨率因子2、4、6,模型的PSNR分别为33.781 dB、35.292 dB、37.538 dB, SSIM分别为0.817、0.892、0.953,分类精度分别为99.61、98.05、96.09。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Iterative Super Resolution Network (ISNR) for Potato Leaf Disease Detection
Since ancient times, agricultural diseases brought on by pests, bacteria, viruses, and fungus have caused significant food loss that requires worldwide attention. Therefore, crop disease diagnosis as early as possible can significantly prevent loss of yield as well increase monetary value. The disease in crop may be identified by carefully analysing either a leaf, node, or stem. Here, accurate disease diagnosis will typically depend on the resolution of the image. Iterative Super-Resolution Network (ISNR) model is used for analysing low resolution potato leaf and identifying the disease. Through a stochastic iterative denoising procedure, ISNR accomplishes super-resolution while adjusting denoising diffusion probability models by image to image translation. The presented ISNR model is evaluated using the publicly accessible PlantVillage dataset with super resolution factors 2, 4, and 6. For super resolution factors 2, 4, and 6, our model gets PSNR 33.781 dB, 35.292 dB, 37.538 dB, SSIM 0.817, 0.892, 0.953, and classification accuracies of 99.61, 98.05, and 96.09 respectively.
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