Smart Bins have become popular in smart cities and campuses around the world. These bins have a compaction mechanism that increases the bins' capacity as well as automated real-time collection notifications. In this paper, we propose WasteNet, a waste classification model based on convolutional neural networks that can be deployed on a low power device at the edge of the network, such as a Jetson Nano. The problem of segregating waste is a big challenge for many countries around the world. Automated waste classification at the edge allows for fast intelligent decisions in smart bins without needing access to the cloud. Waste is classified into six categories: paper, cardboard, glass, metal, plastic and other. Our model achieves a 97\% prediction accuracy on the test dataset. This level of classification accuracy will help to alleviate some common smart bin problems, such as recycling contamination, where different types of waste become mixed with recycling waste causing the bin to be contaminated. It also makes the bins more user friendly as citizens do not have to worry about disposing their rubbish in the correct bin as the smart bin will be able to make the decision for them.
翻译:智能垃圾箱在世界各地智能城市和校园中变得很受欢迎。 这些垃圾箱有一个压缩机制, 能够增加垃圾箱容量, 以及自动实时收集通知。 在本文中, 我们提出“ 废物网络 ”, 这是一种基于神经神经网络的废物分类模型, 可以部署在网络边缘的低电源设备上, 比如 Jetson Nano 。 将废物分离的问题对全世界许多国家来说是一个巨大的挑战。 边缘的自动废物分类允许在智能垃圾箱中做出快速智能决定而不需要进入云层。 废物被分为六类: 纸、 纸板、 玻璃、 金属、 塑料 和其他。 我们的模型在测试数据集上实现了97 ⁇ 的预测准确度。 这种分类精确度将有助于缓解一些常见的智能垃圾箱问题, 比如回收污染, 不同种类的废物与回收废物混合, 导致垃圾被污染。 它还使垃圾箱更方便用户, 因为公民不必担心在正确的垃圾箱中处理他们的垃圾, 因为智能垃圾箱可以为他们做决定 。