使用卷积神经网络(CNN)进行房屋类别分类

Vichai Viratkapan, Saprangsit Mruetusatorn
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引用次数: 2

摘要

公寓、独栋、店屋、联排别墅等房屋类别的图像分类仍然是网站后端工作的一个主要痛点和关键负担。因为,这个过程仍然使用人工分类,这是低生产率和经常发现错误。本研究的目的是开发一个适合房屋类别分类的“卷积神经网络(CNN)”模型。从4个模型处理的结果显示,基于模型返回的最高整体精度值为75.00%。第二、第三和第四的总体精度值分别是MobileNet为73.24,ResNet50为72.78,VGG-19为25.00%。MobileNet模型的Precision值最高。而与其他三种预训练模型相比,基于模型的召回率和f1得分也最高。综上所述,基于模型是最适合本研究的模型。然而,基于模型、ResNet50和MobileNet模型的精度值差异较小,可以用于房屋类别分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of House Categories Using Convolutional Neural Networks (CNN)
Image classification of house categories, such as condominium, detached house, shophouse and townhouse, is still a major pain point and crucial burden for websites’ backend works. Because, this process is still using manual classification, which are low productivities and often found errors. The objective of this research is to develop an appropriate model of the “Convolutional Neural Networks (CNN)” for house categories classification. The results from 4 models processing revealed that the Based model return the highest overall accuracy value of 75.00 percent. The second, third and fourth overall accuracy values were MobileNet, of 73.24 ResNet50 of 72.78, and VGG-19 of 25.00 percent respectively. The MobileNet model had the highest value of Precision. While the Based model also had the highest values of Recall and F1-score, comparing to other three pre-trained models. In conclusion, the Based model was the most appropriate model to this research. However, the three models, including Based model, ResNet50 and MobileNet models, had small different accuracy values, which can be used for house categories classification.
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