利用数据增强 VGGNet 对房间整洁度进行图像分类

Leni Fitriani, Ayu Latifah, Moch. Rizky Cahyadiputra
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引用次数: 0

摘要

整洁成为每个人都应保持的一个重要方面。整洁包含各种要素,其中一个与之密切相关的方面就是房间的整洁。房间的整洁可以营造一个舒适干净的环境。对于从事酒店业等行业的人来说,房间的整洁尤为重要。因此,需要一种解决方案来解决这一问题,其中一种方法就是利用深度学习来自动进行房间整洁度分类。卷积神经网络(CNN)是实现房间整洁度图像分类的一种流行的深度学习方法,它通过数据增强为图像分类创建了一个性能良好的模型。本研究旨在利用 VGGNet 架构和数据增强技术开发一种使用 CNN 的图像分类模型。这项研究为进一步开发提供了参考,并有可能应用于酒店业。研究结果表明,该模型的准确率达到 98.44%,其中 90% 的数据用于训练和验证,其余 10% 用于测试。本研究得出的结论是,CNN 方法与数据增强相结合,可用于房间整洁度的图像分类。
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Image Classification of Room Tidiness Using VGGNet with Data Augmentation
Tidiness becomes an essential aspect that everyone should maintain. Tidiness encompasses various elements, and one of the aspects closely related to it is the tidiness of a room. The tidiness of a room creates a comfortable and clean environment. The tidiness of a room is particularly crucial for individuals involved in businesses such as the hospitality industry. Therefore, a solution is needed to address this issue, and one of the approaches is to utilize Deep Learning for automatic room tidiness classification. One popular deep learning method for implementing image classification of room tidiness is the convolutional neural network (CNN), which creates a well-performing model for image classification with data augmentation. This research aims to develop an image classification model using CNN with the VGGNet architecture and data augmentation. This study is a reference for further development, with potential applications in the hospitality industry. The research results in a model that achieves an accuracy of 98.44% with a data proportion of 90% for training and validation, while the remaining 10% is used for testing purposes. The conclusion drawn from this study is that the CNN method, combined with data augmentation, can be utilized for image classification of room tidiness.
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