Klasifikasi Sampah Organik dan Non-Organik Menggunakan Convolutional Neural Network

Abdurrahman Ibnul Rasidi, Yolanda Al Hidayah Pasaribu, Afzal Ziqri, Faisal Dharma Adhinata
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引用次数: 2

Abstract

Garbage is a unique problem in Indonesia. From ordinary waste to limited emergency plastic waste, Indonesia is the second-largest source of plastic waste in the world. Separate collection and disposal of waste is one way to reduce the waste generated by society and industry in Indonesia. Sorting out the types of waste is the first step before the recycling process. In the field of Computer Vision research, it is difficult to see the type and form of waste with a camera, therefore this study aims to overcome this problem by using Deep Learning technology which is expected to be implemented in the whole of Indonesia starting from some of the largest waste-producing cities. Deep Learning is a computer (AI) technique for learning like a human - with experiments being a Part of Machine Learning that can be used to classify images. The method used in this study uses the Convolutional Neural Network (CNN) method which can be used to detect and recognize objects in an image, which can be used to create an automatic waste classification system. Broadly speaking, CNN utilizes the convolution process by moving a convolution kernel (filter) of a certain size to an image, the computer gets new representative information from the results of multiplying that part of the image with the filter used. The test results show that the CNN method can classify inorganic waste with accuracy. 96% and organic waste with an accuracy of 62%.
垃圾是印尼独有的问题。从普通垃圾到有限的紧急塑料垃圾,印度尼西亚是世界上第二大塑料垃圾来源国。在印度尼西亚,废物的分类收集和处理是减少社会和工业产生的废物的一种方法。分类垃圾是回收前的第一步。在计算机视觉研究领域,很难用相机看到废物的类型和形式,因此本研究旨在通过使用深度学习技术来克服这一问题,该技术有望从一些最大的废物产生城市开始在整个印度尼西亚实施。深度学习是一种像人类一样学习的计算机(AI)技术-实验是机器学习的一部分,可用于对图像进行分类。本研究使用的方法使用卷积神经网络(CNN)方法,该方法可用于检测和识别图像中的物体,并可用于创建自动废物分类系统。一般来说,CNN利用卷积过程,将一定大小的卷积核(滤波器)移动到图像上,计算机从图像的这一部分与所使用的滤波器相乘的结果中获得新的代表性信息。实验结果表明,该方法能较准确地对无机垃圾进行分类。96%和有机废物,准确率为62%。
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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