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Computer Vision-Based Medical Cloud Data System for Bac Muscle Image Detection

机译:基于计算机视觉的Bac肌肉图像检测医疗云数据系统

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摘要

The fast development of image recognition and information technology has influenced people’s life and industry management mode not only in some common fields such as information management, but also has very much improved the working efficiency of various industries. In the healthcare field, the current highly disparate doctor-patient ratio leads to more and more doctors needing to undertake more and more patient treatment tasks. Back muscle image detection can also be considered a task in medical image processing. Similar to medical image processing, back muscle detection requires first processing the back image and extracting semantic features by convolutional neural networks, and then training classifiers to identify specific disease symptoms. To alleviate the workload of doctors in recognizing CT slices and ultrasound detection images and to improve the efficiency of remote communication and interaction between doctors and patients, this paper designs and implements a medical image recognition cloud system based on semantic segmentation of CT images and ultrasound recognition images. Accurate detection of back muscles was achieved using the cloud platform and convolutional neural network algorithm. Upon final testing, the algorithm of this system partially meets the accuracy requirements proposed by the requirements. The medical image recognition system established based on this semantic segmentation algorithm is able to handle all aspects of medical workers and patients in general in a stable manner and can perform image segmentation processing quickly within the required range. Then, this paper explores the effect of muscle activity on the lumbar region based on this system.
机译:图像识别和信息技术的快速发展,不仅在信息管理等一些共性领域影响了人们的生活和行业管理模式,而且极大地提高了各行业的工作效率。在医疗保健领域,目前医患比例差异很大,导致越来越多的医生需要承担越来越多的患者治疗任务。背部肌肉图像检测也可以被认为是医学图像处理中的一项任务。与医学图像处理类似,背部肌肉检测需要首先处理背部图像并通过卷积神经网络提取语义特征,然后训练分类器来识别特定的疾病症状。为减轻医生识别CT切片和超声检测图像的工作量,提高医患远程沟通互动效率,设计并实现了基于CT图像和超声识别图像语义分割的医学图像识别云系统。利用云平台和卷积神经网络算法实现了背部肌肉的准确检测。经最终测试,该系统的算法部分满足要求提出的精度要求。基于这种语义分割算法建立的医学图像识别系统,能够稳定地处理医务工作者和患者的方方面面,能够在要求的范围内快速进行图像分割处理。然后,本文基于该系统探讨了肌肉活动对腰部区域的影响。

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