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Received:September 02, 2021 Revised:September 26, 2021
Received:September 02, 2021 Revised:September 26, 2021
中文摘要: 通用深度学习算法提取的医学手骨图像特征不能很好地区分相近年龄图像的差异, 这导致骨龄分类器的预测精度较低. 根据基于深度学习的轻量级神经网络MobileNet设计了一种改进的骨龄分类器RIL-MobileNetV3 Large, 通过改进LBP处理层得到了具有细致纹理特征的手骨数据集并引入注意力机制进行自动定位, 通过学习处理层处理后的手骨X光片中的深层区域特征完成识别和骨龄的分类, 在公共数据集上进行实验并对该分类器进行多次训练调优, 结果表明改进设计的分类器在骨龄预测中具有高达94.204%的准确率和0.350岁的均值误差, 而且改进的轻量级网络为可移动智能便携预测骨龄奠定基础.
Abstract:The extracted features of medical hand bone images by the general deep learning algorithm can’t well distinguish the differences from images with similar age. It leads to the low prediction accuracy of bone age classifier. An improved bone age classifier, named RIL-MobileNetV3 Large, in accordance with the deep learning-based lightweight neural network MobileNet is designed. A dataset of hand bone is generated by the improved LBP processing layer with fine textures and an attention mechanism for automatic positioning is introduced. It complete the recognition and classification of bone age by learning deep area features in the X-ray of hand bone treated by the processing layer. A lot of training is carried out for tuning accompanied by the experiment on public datasets. The results show that the improved classifier has got a high accuracy of 94.204% and a mean error of 0.350 years in the bone age prediction. The improved lightweight network lays a foundation for mobile, intelligent and portable prediction devices of bone age.
keywords: bone age classifier deep learning LBP texture enhancement attention mechanism MobileNet neural network texture feature
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基金项目:国家自然科学基金(52005045); 北京市自然科学基金-海淀原始创新联合基金(L192018); 北京高校高精尖学科建设项目(77D2111002)
引用文本:
郭子昇,王吉芳,苏鹏.基于深度学习的智能骨龄分类器.计算机系统应用,2022,31(6):339-346
GUO Zi-Sheng,WANG Ji-Fang,SU Peng.Intelligent Bone Age Classifier Based on Deep Learning Algorithm.COMPUTER SYSTEMS APPLICATIONS,2022,31(6):339-346
郭子昇,王吉芳,苏鹏.基于深度学习的智能骨龄分类器.计算机系统应用,2022,31(6):339-346
GUO Zi-Sheng,WANG Ji-Fang,SU Peng.Intelligent Bone Age Classifier Based on Deep Learning Algorithm.COMPUTER SYSTEMS APPLICATIONS,2022,31(6):339-346