Research on Bioengineering Algorithm Based on Deep Learning Neural Network

Hanyu Wang
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Abstract

Deep learning (DL) is a fresh study orientation in the field of machine learning in computer science. It is recommend into machine learning to make it nearer to the customary artificial target intelligence. DL is the inherent law and express level of learning sample data, and the information get in the learning procedure is of mighty help to the explain of data such as words, images and sounds. CNN (Convolutional Neural Network) combines feature extraction with itemize process to train neural network, which has acquire mighty successful in the field of image classification. This paper focuses on the automatic classification of fetal facial ultrasound images. A 19-layer convolution network is proposed and improved. By using data enhancement, adding global mean pooling layer, reducing the number of channels in the full connection layer of the model, and optimizing learning based on parameter transfer learning of fine-tuning training, the automatic classification of fetal facial ultrasound images with limited data volume can be realized. Match with the present solutions, the depth network proposed in this paper can effectively avoid ultrasonic noise interference and learn deep features more effectively. A heavy quantity of specific analysis test have proved its effectiveness.
基于深度学习神经网络的生物工程算法研究
深度学习(Deep learning, DL)是计算机科学中机器学习领域的一个新的研究方向。它被推荐到机器学习中,使其更接近惯常的人工智能目标。深度学习是学习样本数据的内在规律和表达水平,学习过程中获得的信息对文字、图像、声音等数据的解释有很大的帮助。卷积神经网络(Convolutional Neural Network, CNN)将特征提取与逐项处理相结合来训练神经网络,在图像分类领域取得了巨大的成功。本文主要研究胎儿面部超声图像的自动分类。提出并改进了一个19层卷积网络。通过数据增强、增加全局均值池化层、减少模型全连接层的通道数以及基于微调训练参数迁移学习的优化学习,可以实现数据量有限的胎儿面部超声图像的自动分类。与现有的解决方案相匹配,本文提出的深度网络可以有效地避免超声波噪声干扰,更有效地学习深度特征。大量的具体分析试验证明了其有效性。
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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