基于VGG16和VGG19迁移学习的孵卵器图像分类

Apri Junaidi, Jerry Lasama, Faisal Dharma Adhinata, A. Iskandar
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引用次数: 5

摘要

图像分类领域的研究正在激增,并为社会带来了利益。本研究的重点是对培养箱进行图像分类,培养箱除监测温度和湿度外。还需要监测孵化器的条件。本研究提出了鸡蛋、孵化蛋和小鸡的分类。每个对象都需要许多图像,三个类总共需要3,924张图像。从谷歌图像中收集的数据集和作者拥有的在私人农场用智能手机相机拍摄的图像集。进行数据预处理,如将图像形状更改为VGG所需的224x224像素的正方形,增强以再现数据,共享训练数据是输入大小的80%和20%验证。对数据进行预处理后,进行模型形成和训练过程,得到各模型的结果:Custom CNN模型的准确率为0.8687,VGG16的准确率为0.90,VGG19的准确率为0.92。本研究表明,迁移学习在图像分类中具有最高的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Classification for Egg Incubator using Transfer Learning of VGG16 and VGG19
Research in the field of image classification is proliferating and providing benefits to the community. This research focuses on image classification on incubators, incubators in addition to monitoring temperature and humidity. Monitoring of conditions in incubators is also required. This study proposes a classification of eggs, hatching eggs, and chicks. Many images of each object are needed, a total of 3,924 images from all three classes. The data set collected from google image and the collection of images owned by the author obtained from shooting with a smartphone camera on a private farm. Data preprocessing is carried out, such as changing the shape of the image to a square that VGG required 224x224 pixels, augmentation to reproduce data, and sharing training data are the input size 80 and 20 percent validation. After preprocessing the data, the model formation and training process was carried out with the results for each model: Custom CNN model yielded an accuracy of 0.8687, VGG16 produced an accuracy of 0.90, and VGG19 produced an accuracy of 0.92. This study shows that transfer learning has the highest accuracy in image classification.
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