论文标题
自动检测和分类废物消费药物以进行适当的管理和处置
Automatic Detection and Classification of Waste Consumer Medications for Proper Management and Disposal
论文作者
论文摘要
每年,在美国,数百万磅的药物仍未使用,并受到家庭处置,即保存在药品柜中,在厕所里冲洗或定期扔垃圾。但是,在家中处置可能会对环境和公共卫生产生负面影响。由毒品执法局(DEA)及其州和行业合作伙伴赞助的药物抵押计划(药物收款)收集未使用的消费药,并为家中处置提供了最佳替代品。但是,毒品可靠的操作价格昂贵,而且不可广泛。在本文中,我们表明可以将人工智能(AI)应用于药物收回,以使其在操作上更加有效。由于对任何废物的识别对于适当的处置至关重要,因此我们表明,仅基于物理特征和视觉外观,可以准确地识别出零散的消费药物。我们已经开发了一种自动技术,该技术使用深度神经网络和计算机视觉来识别和分离固体药物。我们将该技术应用于大约一千个松散药丸的图像,并成功地以0.912的精度正确识别药丸,前5次精度为0.984。我们还表明,可以将危险药与数据集中的非危害药物区分开,准确性为0.984。我们认为,可以利用人工智能的力量来利用,这些产品可以更有效地促进毒品收款的运行,并帮助它们在全国范围内广泛使用。
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 physical features and visual appearance. We have developed an automatic technique that uses deep neural networks and computer vision to identify and segregate solid medicines. We applied the technique to images of about one thousand loose pills and succeeded in correctly identifying the pills with an accuracy of 0.912 and top-5 accuracy of 0.984. We also showed that hazardous pills could be distinguished from non-hazardous pills within the dataset with an accuracy of 0.984. We believe that the power of artificial intelligence could be harnessed in products that would facilitate the operation of the drug take-backs more efficiently and help them become widely available throughout the country.