Litcius/Paper detail

Domestic garbage recognition and detection based on Faster R-CNN

Zhifeng Nie, Wenjie Duan, Xiangdong Li

2021Journal of Physics Conference Series15 citationsDOIOpen Access PDF

Abstract

Abstract The core of intelligent garbage sorting is target identification and detection. In order to achieve effective garbage sorting, on the basis of deep learning, the Faster R-CNN target detection model and ResNet50 image classification model are used to identify and train 3984 garbage images, and predict 3552 images. The results show that the accuracy of garbage recognition is 89.681%, the average accuracy of each garbage prediction is 91.68%, and the accuracy of each category of garbage image prediction is over 93.3%. Through the identification, detection and classification prediction of garbage images, it provides data support for the intelligent classification of domestic garbage.

Topics & Concepts

GarbageSortingComputer scienceIdentification (biology)Artificial intelligencePattern recognition (psychology)Garbage collectionComputer visionAlgorithmBiologyBotanyProgramming languageScientific and Engineering Research TopicsE-commerce and Technology Innovations