College of Physical Education, Shanghai Normal University, Shanghai 200234, China.
Biomed Res Int. 2022 Jul 31;2022:4438251. doi: 10.1155/2022/4438251. eCollection 2022.
The sensed data from infant sports and training programs are useful in analyzing their health conditions and forecasting any disorders or abnormalities. The sensed information is processed for providing errorless predictions for infant diseases/disorders, coupled with artificial intelligence and sophisticated healthcare technologies. The problem of noncongruent sensed data impacting the forecast occurs due to errors between consecutive training iterations. This problem is addressed using the deep learning (PEST-DL) proposed perceptible error segregation technique. The training process is halted between two consecutive iterations generating errors until a similarity verification based on infant history is performed. The similarity output determines the errors due to mismatching data observations, and therefore, the data augmentation is performed. The first perceptible error is mitigated by training the learning paradigm with all possible infant history data in the learning process. This prevents prediction lag and data omissions due to discrete availability. The learning is trained from the identified error with the precise detected disorder/abnormality data previously detected. Therefore, the first and consecutive training data segregate error instances from the actual training iterations. This improves the prediction accuracy and precision with controlled error and time complexity.
婴儿运动和训练计划的感知数据可用于分析其健康状况并预测任何障碍或异常。感知信息经过处理,可对婴儿疾病/障碍进行无误预测,并结合人工智能和先进的医疗技术。由于连续训练迭代之间的误差,出现了不一致的感知数据影响预测的问题。使用深度学习(PEST-DL)提出的可感知错误分离技术解决了该问题。在两个连续的迭代过程中停止训练,直到基于婴儿历史记录进行相似性验证。相似性输出确定由于数据观察不匹配而导致的错误,因此执行数据扩充。通过在学习过程中使用所有可能的婴儿历史数据来训练学习范例,可以减轻第一个可感知错误。这可以防止由于离散可用性而导致的预测滞后和数据遗漏。学习是从以前检测到的准确检测到的障碍/异常数据中,从识别出的错误进行的。因此,第一个和连续的训练数据将错误实例与实际的训练迭代分开。这可以提高预测准确性和精度,并控制误差和时间复杂度。