利用变异氮化镓进行缺陷果实分类

Prateek Durgapal, Divyesh Rana, Saksham Aggarwal, Anjali Gautam
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引用次数: 1

摘要

鉴别和分离不良水果和健康水果是水果加工行业的一项重要任务。在这篇研究论文中,我们展示了一种使用不同版本的生成对抗网络(GANs)和迁移学习的柠檬水果缺陷分类方法。该算法首先对柠檬图像进行预处理,然后使用gan进行数据增强。gan生成了不同版本的原始柠檬图像,这进一步有助于提高分类精度所需的训练数据的大小。在此之后,将所有原始图像和增强图像作为训练数据集,并将其用于预训练卷积网络(cnn)模型,其中微调有助于对测试图像进行分类。在这里,柠檬质量控制数据集被用作基础数据集,在整个工作中进行所有实验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Defective Fruit Classification using Variations of GAN for Augmentation
Identification and segregation of defective fruits from healthy ones is an important task in the fruit processing industry. In this research paper, we showcase a method for defective lemon fruit classification using different versions of Generative Adversarial Networks (GANs) and Transfer Learning. The algorithm begins with preprocessing the lemon images followed by data augmentation using GANs. GANs generated different versions of original lemon images, which further helped in increasing the size of training data which is required for improving the classification accuracy. After this, all the original and augmented images used as training dataset, which has been utilized by pre-trained Convolutional Networks (CNNs) model where fine-tuning helped in classifying test images. Here, the Lemons Quality Control Dataset was used as the base dataset for conducting all experiments throughout this work.
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