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
- 发表年份
- 2019
- 引用次数
- 34
- 访问权限
- 开放获取
摘要
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%.
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