Predictive Assessment of Fetus Features Using Scanned Image Segmentation Techniques and Deep Learning Strategy

S. Umamaheswaran, Rajan John, S. Nagarajan, M. KarthickRaghunathK., K. Arvind
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引用次数: 1

Abstract

Fetus weight at various stages of pregnancy is a critical component in determining the health of the baby. Abnormalities arising early in the pregnancy may be prevented by preventive measures. A variety of techniques suggested to predict foetus weight. Computer vision is a capability that can estimate the weight of a baby based on ultra-sonograms taken at various stages of pregnancy. Using the scanned data, one may train an advanced convolutional neural network that helps in accurately forecasting the fetus's size, weight, and overall health. The research utilizes computer vision techniques with image clustering methods for preprocessing, to predict the foetus's health, training datasets defective foetus datasets and healthy foetus datasets. Developing an integrated computer vision and a deep neural network is the hour which decrease the cost of operations and manual processes This study estimate the fetus's weight with optimal accuracy range at varying gestation age.
基于扫描图像分割技术和深度学习策略的胎儿特征预测评估
在怀孕的各个阶段,胎儿体重是决定婴儿健康的关键因素。妊娠早期出现的异常可以通过预防措施加以预防。预测胎儿体重的方法有很多。计算机视觉是一种基于在怀孕的不同阶段拍摄的超音波来估计婴儿体重的能力。利用扫描数据,人们可以训练一个先进的卷积神经网络,帮助准确预测胎儿的大小、体重和整体健康状况。本研究利用计算机视觉技术和图像聚类方法进行预处理,对胎儿健康状况进行预测、训练数据集、缺陷胎儿数据集和健康胎儿数据集。开发一种集成计算机视觉和深度神经网络的方法,减少了手术和人工操作的成本,本研究在不同孕龄下对胎儿体重的估计具有最佳精度范围。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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