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Development of a method of detection and classification of waste objects on a conveyor for a robotic sorting system

A V Seredkin, M. P. Tokarev, I A Plohih, O. A. Gobyzov, Д. М. Маркович

Year
2019
Citations
34
Access
Open access

Abstract

Abstract Currently used recycling technologies have limitations on the composition of recyclable waste, which makes them specialized. Thus, the preliminary sorting of municipal solid waste is a necessary step, increasing the efficiency of using municipal solid waste as a resource. To sort municipal solid waste we developed a method for detecting and classifying waste on a conveyor line using neural network image processing. Images from a camera are fed to a neural network input, which determines the position and type of detected objects. To train the neural network a database of more than 13,000 municipal solid waste images was created. Mean-Average Precision for the neural network model was 64%.

Keywords

Municipal solid wasteSortingsortArtificial neural networkConveyor beltComputer scienceArtificial intelligenceWaste managementEngineeringComputer vision

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