部分封闭药品吸塑包装的识别

Sheng-Luen Chung, Chih-Fang Chen, G. Hsu, Shen-Te Wu
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引用次数: 4

摘要

医疗调剂是指在办公室内配制和发放处方药,多采用吸塑包装单位进行调剂。本研究的目的是设计一种基于图像的吸塑包装识别解决方案,该解决方案能够根据手持药物的两个相反的相机图像对提取的药物进行识别。为此,本文提出了一种基于深度学习的手持泡罩识别网络(HBIN),用于识别存在于任意位置和方向的部分遮挡的泡罩包,这些泡罩包可能具有杂乱的背景。所提出的HBIN是一个两阶段的网络,其中包括Blister裁剪网络(BCN)和RTT识别网络(RIN)。BCN子网是一种图像到图像翻译的深度学习网络,它是对手持药物的两侧轮廓进行裁剪,在裁剪后的这对轮廓可以并置为固定大小和固定方向的RTT(矫正两面模板),在RIN子网中进行最终识别。收集并标记了泡罩包装数据集,其中包含基于230种类型的总共30,394张图像,这些图像通常在医院配药站发现。经过大量的测试,原始原始HBIN在相似背景下的准确率达到了94.33%以上,在不同背景下的准确率达到了79.80%。虽然仍是一个原型,但初步结果表明,在检索过程中无需诉诸条形码或RFID标签即可识别泡罩包装的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of Partially Occluded Pharmaceutical Blister Packages
Medical dispensing refers to the in-office preparation and delivery of prescription drugs, which is mostly dispensed by the units of blister packages. The objective of the study is to design an image-based blister package identification solution, which is capable of identifying a fetched drug based on a pair of the two opposite camera images of the hand-held drug. To this aim, this paper proposes a deep learning based Hand-held Blister Identification network (HBIN) to identify partially occluded blister packages present in arbitrary positions and orientation with possibly cluttered backgrounds. The proposed HBIN is a two-stage network that contains Blister cropping network (BCN) followed by RTT identification network (RIN). The BCN subnetwork, an image to image translation deep learning network, is to crop both side contours of the hand-held drug, before the pair of cropped contours can be juxtaposed as a fixed sized and fixed orientation RTT (rectified two-sides template) for final identification in the RIN sub-network. A blister package dataset containing a total of 30,394 images based on 230 types, typically found in hospital dispensing stations, have been collected and labeled. With extensive test, the accuracy of the primitive primitive HBIN attains an F-score of more than 94.33% for testing data from similar backgrounds and an F-score of 79.80% for dissimilar backgrounds. Although still a prototype, the preliminary results show the feasibility of identifying blister packages during retrieval process without resorting to bar codes nor RFID tags.
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