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RecycleNet: Intelligent Waste Sorting Using Deep Neural Networks

机译:RecycleNet:使用深度神经网络进行智能废物分类

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Waste management and recycling is the fundamental part of a sustainable economy. For more efficient and safe recycling, it is necessary to use intelligent systems instead of employing humans as workers in the dump-yards. This is one of the early works demonstrating the efficiency of latest intelligent approaches. In order to provide the most efficient approach, we experimented on well-known deep convolutional neural network architectures. For training without any pre-trained weights, Inception-Resnet, Inception-v4 outperformed all others with 90% test accuracy. For transfer learning and fine-tuning of weight parameters using ImageNet, DenseNet121 gave the best result with 95% test accuracy. One disadvantage of these networks, however, is that they are slightly slower in prediction time. To enhance the prediction performance of the models we altered the connection patterns of the skip connections inside dense blocks. Our model RecycleNet is carefully optimized deep convolutional neural network architecture for classification of selected recyclable object classes. This novel model reduced the number of parameters in a 121 layered network from 7 million to about 3 million.
机译:废物管理和回收是可持续经济的基本组成部分。为了更有效,更安全地进行回收,有必要使用智能系统,而不是在堆场中雇用人类作为工人。这是证明最新智能方法效率的早期工作之一。为了提供最有效的方法,我们对众所周知的深度卷积神经网络体系结构进行了实验。对于没有任何预训练权重的训练,Inception-Resnet,Inception-v4的测试精度达到了90%的所有其他性能。为了使用ImageNet进行传递学习和权重参数的微调,DenseNet121以95%的测试精度给出了最佳结果。但是,这些网络的一个缺点是它们的预测时间稍慢。为了提高模型的预测性能,我们更改了密集块内跳过连接的连接模式。我们的模型RecycleNet是经过精心优化的深度卷积神经网络体系结构,用于对选定的可回收对象类别进行分类。这个新颖的模型将121层网络中的参数数量从700万减少到了300万。

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