Telemedicine and mobile health applications, especially during the quarantine imposed by the covid-19 pandemic, led to an increase on the need of transferring health monitor readings from patients to specialists. Considering that most home medical devices use seven-segment displays, an automatic display reading algorithm should provide a more reliable tool for remote health care. This work proposes an end-to-end method for detection and reading seven-segment displays from medical devices based on deep learning object detection models. Two state of the art model families, EfficientDet and EfficientDet-lite, previously trained with the MS-COCO dataset, were fine-tuned on a dataset comprised by medical devices photos taken with mobile digital cameras, to simulate real case applications. Evaluation of the trained model show high efficiency, where all models achieved more than 98% of detection precision and more than 98% classification accuracy, with model EfficientDet-lite1 showing 100% detection precision and 100% correct digit classification for a test set of 104 images and 438 digits.
翻译:远程医疗和移动保健应用,特别是在Covid-19大流行造成的隔离期间,导致将病人的健康监测读数转移给专家的需要增加。考虑到大多数家庭医疗设备使用七个部分的显示,自动显示阅读算法应为远程保健提供一个更可靠的工具。这项工作提议采用端对端方法,根据深学习物体探测模型,从医疗设备中检测和读取七个部分的显示。两个先进的模型组,即曾接受MS-CO数据集培训的高效、高效Det-Det-lite,对由用移动数字相机拍摄的医疗设备照片组成的数据集进行了微调,以模拟真实应用。对经过培训的模型的评估显示,效率很高,所有模型都达到了98%以上的探测精确度和98%以上的分类精度,模型高效Det-lit1显示100%的探测精确度,对104个图像和438个数字的测试组进行了100%的正确数字分类。