利用深度学习技术进行垃圾分类

Ngo Huu Huy, Bui Van Tung, LE Hung Linh, Nguyen Duy Minh
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摘要

垃圾分类一直是环境保护、资源回收和社会民生的重要问题。然而,垃圾分类需要花费大量的时间和精力。而且,垃圾分类直接影响到工人的身体健康。目前,由于人工智能的发展,先进的垃圾分类机器人越来越多地应用于回收工厂。在与人工智能技术相结合的机器人的充分支持下,垃圾将得到越来越快速的处理和准确的分类。因此,本研究提出了一种基于深度学习技术的高效简单的垃圾分类模型。该模型可以自动准确地对垃圾进行分类,从而节省人力。本文采用ResNet-50模型进行系统开发。输入数据包括垃圾类型的图像进行分类,将垃圾分为3组。实验结果证明了该模型的有效性。
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Garbage classification using deep learning technology
Garbage classification has always been an important issue in environmental protection, resource recycling, and social livelihood. However, garbage classification takes a lot of time and effort. Moreover, garbage classification directly affects the health of workers. Currently, due to the development of artificial intelligence, advanced garbage classification robots are being used more and more in recycling factories. With the sufficient support of robots integrated with artificial intelligence technology, garbage will be more and more quickly processed and accurately classified. Therefore, this study presents an efficient and simple garbage classification model based on deep learning technology. This model will automatically and accurately classify garbage, thereby freeing up human labors. In this paper, the ResNet-50 model was used to develop the system. The input data includes images of garbage types to perform classification, and 3 different groups of garbage will be classified. The experimental results demonstrate the effectiveness of this model.
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