AUTORECYCLER: PROTOTYPE BASED ON ARTIFICIAL VISION TO AUTOMATE THE MATERIAL CLASSIFICATION PROCESS (PLASTIC, GLASS, CARDBOARD AND METAL).

Published: 15 May 2024| Version 1 | DOI: 10.17632/yf8z2263gy.1
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Environmental protection has gained greater importance over time due to the negative impact and irreversible consequences that have occurred worldwide and stem from pollution. One of the great challenges faced in different parts of the world is the inadequate management and classification of solid waste. In order to contribute to tackling this issue, this paper proposes an automated sorting system based on artificial vision which allows recognition and separation of recyclable materials (Plastic, Glass, Cardboard and Metal) through a webcam connected in real time to the Nvidia® Jetson Nano™ 2GB programming board, which has a convolutional neural network (CNN) trained for the proper classification of waste. The system had a 95% accuracy in separating plastic, 96% in glass and metal, and 94% in cardboard. With this in mind, we conclude it contributes to the recycling effort, which has an impact on the reduction of environmental pollution worldwide.

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Machine Vision

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