Automatic Detection and Classification of Waste Consumer Medications for Proper Management and Disposal
Bahram Marami, Atabak Reza Royaee

TL;DR
This paper presents an AI-based computer vision system that accurately identifies and classifies consumer medications from images, aiming to improve drug take-back programs and promote environmentally safe disposal.
Contribution
It introduces a novel deep learning approach for automatic medication identification and hazardous classification using visual features, enhancing drug disposal efficiency.
Findings
Achieved 91.2% accuracy in medication identification
Achieved 98.4% accuracy in hazardous pill detection
Demonstrated potential to improve drug take-back operations
Abstract
Every year, millions of pounds of medicines remain unused in the U.S. and are subject to an in-home disposal, i.e., kept in medicine cabinets, flushed in toilet or thrown in regular trash. In-home disposal, however, can negatively impact the environment and public health. The drug take-back programs (drug take-backs) sponsored by the Drug Enforcement Administration (DEA) and its state and industry partners collect unused consumer medications and provide the best alternative to in-home disposal of medicines. However, the drug take-backs are expensive to operate and not widely available. In this paper, we show that artificial intelligence (AI) can be applied to drug take-backs to render them operationally more efficient. Since identification of any waste is crucial to a proper disposal, we showed that it is possible to accurately identify loose consumer medications solely based on the…
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Taxonomy
TopicsMachine Learning and Algorithms · Intravenous Infusion Technology and Safety · Recycling and Waste Management Techniques
