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Secure prediction and assessment of sports injuries using deep learning based convolutional neural network

机译:基于深入学习的卷积神经网络安全预测和评估运动损伤

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In recent days, many information and image evidence in the field of medicine is being designed and developed by the advancement of computer technology. Presently, sport medical data is an essential department for medical sector and it is responsible for assuring sports safety based on the recovery level after an injury due to sports activity. The approach to reliably interpretation and valuable data information using a vast number of medical sports data and events has become an important research path in the collection and analysis of medical data. This paper discusses the extraction, study, and lack of training and accuracy of complex algorithms for critical sporting medical data. This paper involves with an optimized convolutional neural network (OCNN) based on deep-learning model to ensure successful detection and risk assessments of sport-medicine diseases and adopts the Self-Adjustment Resizing algorithm (SAR) augmented by the self-coding method of the convolution (SCM). CNN model helps to evaluate sports medicine in multi-dimensional results and suggested OCNN classification constitutes two convolutional layers, two pool layers, a fully connected layer, and a SoftMax structure that can be used for the classification of sport-related medical data. The CNN facilitates multi-dimensional sports medicine data analysis and to conclude a cloud-based loop model to create an advanced medical data network for sports medicine. Experiments illustrate that this approach offers technical support and guide to deploying a specific cloud-based fusion system.
机译:最近几天,通过计算机技术的进步,设计和开发了许多信息和医学领域的信息。目前,体育医疗数据是医疗部门的重要部门,它负责根据体育活动造成伤害后的恢复水平确保体育安全。使用广大医疗体育数据和事件可靠地解释和有价值的数据信息的方法已成为医疗数据收集和分析的重要研究路径。本文讨论了批判性体育数据复杂算法的提取,研究和缺乏培训和准确性。本文涉及基于深度学习模型的优化卷积神经网络(OCNN),以确保运动药物疾病的成功检测和风险评估,采用自我调整调整调整算法(SAR)通过自编码方法增强卷积(SCM)。 CNN模型有助于评估多维结果中的运动医学,并建议OCNN分类构成两个卷积层,两个池层,完全连接层和软MAX结构,可用于运动相关的医疗数据的分类。 CNN促进了多维运动医学数据分析,并得出基于云的循环模型,以为运动医学创建先进的医疗数据网络。实验说明了该方法提供了部署特定云的融合系统的技术支持和指南。

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