ConvoWaste:一个使用深度学习的自动废物分类机器

Md. Shahariar Nafiz, S. Das, Md. Kishor Morol, Abdullah Al Juabir, Dipannyta Nandi
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引用次数: 5

摘要

如今,妥善的城市废物管理是保持绿色和清洁环境的最大问题之一。自动垃圾分类系统是提高国家可持续性和促进循环经济的可行解决方案。本文利用深度卷积神经网络(Deep Convolutional Neural Network, DCNN)中的ConvoWaste智能目标检测算法,结合图像处理技术,提出了一种将垃圾分类成不同部分的机器。本文采用深度学习和图像处理技术对垃圾进行精确分类,并在伺服电机系统的帮助下将检测到的垃圾放入相应的垃圾箱中。本机通过放置在每个垃圾桶中的超声波传感器和基于gsm的双频通信技术,将垃圾箱的垃圾水平和装满垃圾的垃圾箱的垃圾时间通知主管部门。整个系统通过一个安卓应用程序远程控制,以便通过其自动化特性将分类废物倾倒在所需的地方。该系统的使用可以帮助回收最初注定要成为废物的资源,利用自然资源并将这些资源重新转化为可用产品的过程。因此,该系统通过资源的优化和提取,有助于实现循环经济的标准。最后,根据人工智能(AI)领域的技术进步,使该系统以低成本和更高的精度水平提供服务。我们的ConvoWaste深度学习模型有98%的准确率。
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ConvoWaste: An Automatic Waste Segregation Machine Using Deep Learning
Nowadays, proper urban waste management is one the biggest concerns for maintaining a green and clean environment. An automatic waste segregation system can be a viable solution to improve the sustainability of the country and to boost up the circular economy. This paper proposes a machine to segregate the waste into the different parts with the help of smart object detection algorithm using ConvoWaste in the field of Deep Convolutional Neural Network (DCNN), and image processing technique. In this paper, the deep learning and image processing techniques are applied to classify the waste precisely and the detected waste is placed inside the corresponding bins with the help of a servo motor-based system. This machine has the provision to notify the responsible authority regarding the waste level of the bins and the time to trash out the bins filled with garbage by using the ultrasonic sensors placed in each bin and the dual-band GSM-based communication technology. The entire system is controlled remotely through an android app in order to dump the separated waste in a desired place by its automation properties. The use of this system can aid the process of recycling resources that were initially destined to become waste, utilizing natural resources and turning these resources back into the usable products. Thus, the system helps to fulfill the criteria of circular economy through the resource optimization and extraction. Finally, the system is made to provide the services at a low cost with higher accuracy level in terms of the technological advancement in the field of Artificial Intelligence (AI). We have got 98% accuracy for our ConvoWaste deep learning model.
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