使用高效网b0进行废物分类

William Mulim, Muhammad Farrel Revikasha, Rivandi, Novita Hanafiah
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引用次数: 3

摘要

废物管理已成为新兴问题之一。加快整个过程的一种方法是进行垃圾分类,这可以通过计算机使用图像识别来完成。由于高效的架构和与其他深度卷积神经网络相当的性能,因此可以在此场景中使用EfficientNet-B0。在这个实验中,我们对它进行了迁移学习和微调,然后进行了超参数探索。我们也在其他几个模型上做了同样的过程,在最小模型之一的训练中,EfficientNet-B0达到了96%的最佳准确率。虽然我们在验证上获得了91%的准确率,但我们也发现我们的模型在分类可回收垃圾方面存在明显的困难。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Waste Classification Using EfficientNet-B0
Waste management has become one of the emerging problems. A way to speed up the whole process is by doing waste sorting, which could be done by computer using image recognition. EfficientNet-B0 could be utilized in this scenario due to the more efficient architecture and comparable performance with others deep convolutional neural network. For this experimentation, we did transfer learning and fine-tuning on it, and then do hyperparameter exploration. We also did the same process on few other models, and EfficientNet-B0 achieves the best accuracy at 96% accuracy on training with one of the smallest models. While we got 91% accuracy on validation, we also discover that our model has noticeable difficulty in classifying recyclables waste.
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