基于人工智能的智能药物分配器药丸检测与消泡点查找系统

J. F. Pinto, J. Vilaça, N. Dias
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引用次数: 0

摘要

在服药的过程中,服用正确的药片,并确保药物不含任何污染物是非常重要的。目前的药物分配器旨在帮助患者;然而,它们仍然存在固有的操作缺陷。在处理水泡时,手动填充分配器是一项冗长且容易出错的任务。此外,由于分配器内的药物储存在其水泡之外,它暴露在空气和湿度中,这阻碍了其效力。为了解决这些问题,我们的目标是开发一种新的药物分配器,它只在需要时从包装中取出药片。本文介绍了一种用于该分配器的系统,该系统可以自动检测药丸并确定其最佳消泡点,从而以最有效的方式提取它们。提出的系统可以分为两个阶段:第一阶段,定制训练的Mask-RCNN检测药丸并根据它们的类型对它们进行分类。在第二阶段,一个定制的图像处理算法计算出药丸可以分解的理想位置。首先,创建包含不同类型药丸水泡图像的数据集,并对Mask-CNN进行全面注释。然后,训练Mask-RCNN检测药丸并根据形状对其进行分类。根据得到的药丸掩模和分类,在前人研究的基础上,应用图像处理算法计算理想的药丸去破位置。通过正确识别水疱内的每个药丸并找到提取它的最佳位置,该系统可以在一种新的药物分配器中实施,只需要提供水疱。
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AI-Based Pill Detection and Deblistering Spot Finder System for Smart Medication Dispenser
When on a medication regime, it is of extreme importance to take the right pills, and to make sure the medication is free of any contaminant. Current medication dispensers aim to aid patients; however, they still have inherent operational flaws. When dealing with blisters, the manual refilling of a dispenser is a lengthy and error-prone task. Also, as medication inside dispensers is stored out of its blisters it is exposed to air and humidity, which hinder its potency. To solve these issues, we aim to develop a new medication dispenser which removes pills from their packaging only when needed. This paper presents a system to be implemented in said dispenser, which automatically detects pills and locates their best deblistering spot, so they can be extracted in the most efficient way. The proposed system can be split into two phases: On the first phase a custom-trained Mask-RCNN detects pills and classifies them according to their type. On the second stage, a custom image processing algorithm calculates the ideal location where pills can be deblistered. Firstly, a dataset containing images of different types of pill blisters was created and thoroughly annotated for Mask-CNN. Afterwards, Mask-RCNN was trained to detect pills and classify them according to their shape. From the resulting pill masks and classifications, an image processing algorithm is applied to calculate the ideal pill deblistering location according to previous research. By correctly identifying each pill inside a blister and finding the best spot to extract it, the system can be implemented in a new medication dispenser, which only needs to be supplied with blisters.
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