Detection and recognition of hand abnormal state based on deep learning algorithm

Xiaoping Yu, Lin Zhu, Lanxu Jia
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引用次数: 1

Abstract

The system collects and detects hand information of relevant persons in a specific area, and transmits the data to the server for calculation and processing. In response to the abnormal state of the hand, the result picture is fed back to the staff in real time through the mobile app. This paper proposes a method for detecting and recognizing abnormal hand states based on the improved yolov3 algorithm. The system collects real-time pictures of the hand through the camera to determine whether the hand is carrying ring, bandages, and whether there are bleeding points. After optimizing the network and preprocessing the data, the algorithm accuracy can reach 99.7%. In addition, the simplified processing of the model can reduce the burden on the hardware system.
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基于深度学习算法的手部异常状态检测与识别
该系统对特定区域内相关人员的手部信息进行采集和检测,并将数据传输到服务器进行计算和处理。针对手部的异常状态,将结果图片通过手机app实时反馈给工作人员。本文提出了一种基于改进yolov3算法的手部异常状态检测与识别方法。系统通过摄像头实时采集手部图像,判断手部是否带着戒指、绷带、是否有出血点。经过网络优化和数据预处理,算法准确率可达99.7%。此外,模型的简化处理可以减轻硬件系统的负担。
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