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Design and Implementation of Garbage Classification System Based on Deep Learning

机译:基于深度学习的垃圾分类系统的设计与实现

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The rapid development of computer vision makes man-machine interaction possible and has a wide application prospect. At present, the Chinese government has implemented the garbage classification policy in various places, and garbage classification has been paid more and more attention by people. But it happens all the time that garbage is misclassified. This essay proposes an image recognition system to help people classify garbage, which can identify different kinds of garbage. The training data set used to train the system is made up of images taken by a camera. The image is preprocessed by rotation, cutting and other methods. Then ResNet50 is selected to train the preprocessed image. The experimental results show that the garbage classification system in this essay can classify garbage effectively and improve the accuracy of garbage classification.
机译:计算机愿景的快速发展使人机互动成为可能并且具有广泛的应用前景。 目前,中国政府在各个地方实施了垃圾分类政策,垃圾分类已经越来越受到人民的关注。 但它一直在发生垃圾被错误分类。 本文提出了一种图像识别系统,以帮助人们对垃圾进行分类,这可以识别不同种类的垃圾。 用于训练系统的培训数据集由相机拍摄的图像组成。 通过旋转,切割和其他方法预处理图像。 然后选择ResET50以训练预处理的图像。 实验结果表明,本文中的垃圾分类系统可以有效地分类垃圾,提高垃圾分类的准确性。

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