Xception Architecture Transfer Learning for Garbage Classification

Rismiyati, S. Endah, Khadijah, Ilman Nabil Shiddiq
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引用次数: 19

Abstract

Solid waste management issue is main problem especially in developing countries, including Indonesia. Several efforts are made to solve waste management problem. Indonesia government has launched movement to sort different type of garbage on September 2019. Automatic garbage sortation is able to help this program. In order to be able to perform this task, the computer needs to differentiate each type of garbage. This process can be done by using machine learning method to differentiate garbage type. In this research, Transfer learning is used to perform classification task on TrashNet dataset. The models used in this research are ImageNet pretrained VGG16, ResNet-50 and Xception.The experiment result shows that Xception model is able to achieve highest accuracy of 88%, average precision of 84%, and average recall of 84%
面向垃圾分类的异常架构迁移学习
固体废物管理问题是主要问题,特别是在发展中国家,包括印度尼西亚。为解决废物管理问题作出了若干努力。印度尼西亚政府于2019年9月发起了对不同类型垃圾进行分类的运动。自动垃圾分类能够帮助这个程序。为了能够执行这项任务,计算机需要区分每种类型的垃圾。这个过程可以通过使用机器学习方法来区分垃圾类型来完成。本研究采用迁移学习方法对垃圾网数据集进行分类。本研究使用的模型是ImageNet预训练的VGG16、ResNet-50和Xception。实验结果表明,Xception模型最高准确率为88%,平均准确率为84%,平均查全率为84%
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