Identification for Drinking Spout of Plastic Bottle Using Multi Eff-UNet

Shunsuke Moritsuka, Tohru Kamiya
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Abstract

Currently, the increase of general waste is a problem in Japan. It is garbage and human waste. One solution to this problem is to reuse the bodies of used plastic bottles to reduce the amount of plastic waste and the increase in general waste. For this purpose, some municipalities provide bags for disposing of plastic bottle bodies. However, in many cases, the bottles are not only discarded in these bags, but also with their caps attached. In such cases, the caps must be found and removed by hand in the sorting and processing facility at the waste treatment plant. This means that the same work is performed by person for a long time, causing problems such as overlooking caps due to fatigue. To solve these problems, we develop a method for automatic identification of plastic bottle bodies and caps using deep learning technique. In this paper, we propose a model that combines multiple Eff-UNets. Specifically, we combine EfficientNetB4 for local segmentation and EfficientNetB5 for global segmentation. By using our method, we conducted an experiment on images of plastic bottles collected from the internet and other sources. We obtained segmentation results of 97.9% for plastic bottle bodies and 86.0% for plastic bottle caps.
利用多effe - unet对塑料瓶饮水口进行识别
目前,一般垃圾的增加是日本的一个问题。这是垃圾和人类的排泄物。解决这个问题的一个办法是重复利用用过的塑料瓶,以减少塑料废物的数量和一般废物的增加。为此目的,一些市政当局提供处理塑料瓶身的袋子。然而,在许多情况下,瓶子不仅被丢弃在这些袋子里,而且还被贴上了瓶盖。在这种情况下,必须在废物处理厂的分类和处理设施中找到并手动拆除瓶盖。这意味着同样的工作由人长时间完成,导致由于疲劳而忽略帽等问题。为了解决这些问题,我们开发了一种利用深度学习技术自动识别塑料瓶身和瓶盖的方法。在本文中,我们提出了一个结合多个efft - unet的模型。具体来说,我们结合了用于局部分割的effentnetb4和用于全局分割的effentnetb5。通过我们的方法,我们对从互联网和其他来源收集的塑料瓶图像进行了实验。塑料瓶体的分割率为97.9%,塑料瓶盖的分割率为86.0%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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