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基于机器视觉识别的智能垃圾分类系统的设计与实现 被引量:1

Design and Implementation of Intelligent Waste Classification System Based on Machine Vision Recognition
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摘要 随着经济的迅猛发展和人们对工业产品需求的急速增加,生活垃圾规模急剧扩大,因此,垃圾处理已经成为现有城市管理中不可或缺的组成部分。为解决现阶段传统垃圾分类方式带来的劳动力和其他社会资源浪费问题,本文设计了基于计算机视觉识别的智能化垃圾识别分类系统。该系统通过带有垃圾识别算法的上位机和带喷气头的分拣传送带两部分所实现。 With the fast development of economy and the rapid increase of people's demand for industrial products,the scale of domestic waste is greatly expanded.Therefore,waste treatment has become an indispensable part of urban management.In order to solve the waste of labor and other social resources caused by the existing traditional waste classif ication,an intelligent waste identification and classif ication system based on computer vision recognition is designed and provided.The system is realized by host computer with garbage identif ication algorithm and sorting conveyor belt with jet head.
作者 张沛轩 李家杨 陈缔 罗锦雄 蔡永康 许钟煌 ZHANG Peixuan;LI Jiayang;CHEN Di;LUO Jinxiong;CAI Yongkang;XU Zhonghuang(Foshan University of Science and Technology,Foshan,Guangdong Province,528225 China;Foshan(South China)New Materials Research Institute,Foshan,Guangdong Province,528010 china)
出处 《科技创新导报》 2021年第20期76-78,共3页 Science and Technology Innovation Herald
基金 广东大学生科技创新培育专项资金资助项目(项目编号:pbjh2020b0621) 佛山科学技术学院学术基金项目“基于机器视觉识别的智能垃圾分类系统的设计与实现”中期成果。
关键词 机器视觉识别 智能垃圾分类 系统设计实现 信息技术 Machine vision recognition Intelligent waste classif ication Design and implementation of system Information technology
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