First Lessons Learned of an Artificial Intelligence Robotic System for Autonomous Coarse Waste Recycling Using Multispectral Imaging-Based Methods
Current disposal facilities for coarse-grained waste perform manual sorting of materials with heavy machinery. Large quantities of recyclable materials are lost to coarse waste, so more effective sorting processes must be developed to recover them. Two key aspects to automate the sorting process are...
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Zusammenfassung: | Current disposal facilities for coarse-grained waste perform manual sorting
of materials with heavy machinery. Large quantities of recyclable materials are
lost to coarse waste, so more effective sorting processes must be developed to
recover them. Two key aspects to automate the sorting process are object
detection with material classification in mixed piles of waste, and autonomous
control of hydraulic machinery. Because most objects in those accumulations of
waste are damaged or destroyed, object detection alone is not feasible in the
majority of cases. To address these challenges, we propose a classification of
materials with multispectral images of ultraviolet (UV), visual (VIS), near
infrared (NIR), and short-wave infrared (SWIR) spectrums. Solution for
autonomous control of hydraulic heavy machines for sorting of bulky waste is
being investigated using cost-effective cameras and artificial
intelligence-based controllers. |
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DOI: | 10.48550/arxiv.2501.13855 |