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CT Image Analysis and Clinical Diagnosis of New Coronary Pneumonia Based on Improved Convolutional Neural Network

机译:基于改进卷积神经网络的新冠状动脉肺炎的CT图像分析与临床诊断

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In this paper, based on the improved convolutional neural network, in-depth analysis of the CT image of the new coronary pneumonia, using the U-Net series of deep neural networks to semantically segment the CT image of the new coronary pneumonia, to obtain the new coronary pneumonia area as the foreground and the remaining areas as the background of the binary image, provides a basis for subsequent image diagnosis. Secondly, the target-detection framework Faster RCNN extracts features from the CT image of the new coronary pneumonia tumor, obtains a higher-level abstract representation of the data, determines the lesion location of the new coronary pneumonia tumor, and gives its bounding box in the image. By generating an adversarial network to diagnose the lesion area of the CT image of the new coronary pneumonia tumor, obtaining a complete image of the new coronary pneumonia, achieving the effect of the CT image diagnosis of the new coronary pneumonia tumor, and three-dimensionally reconstructing the complete new coronary pneumonia model, filling the current the gap in this aspect, provide a basis to produce new coronary pneumonia prosthesis and improve the accuracy of diagnosis.
机译:本文基于改进的卷积神经网络,深入分析新冠状动脉肺炎的CT图像,利用U-Net系列深神经网络进行语义分段新的冠状动脉肺炎的CT图像,获得新的冠状动脉肺炎区域作为前景和作为二进制图像的背景的剩余区域,为后续图像诊断提供了基础。其次,靶检测框架更快的RCNN提取来自新冠状动脉肺炎肿瘤的CT图像的特征,获得了数据的更高级别的抽象表示,决定了新的冠状动脉肺炎肿瘤的病变位置,并给出了其边界盒图片。通过产生侵犯网络以诊断新冠状动脉肺炎肿瘤的CT图像的病变面积,获得新的冠状动脉肺炎的完整形象,实现了新冠状动脉肺炎肿瘤的CT图像诊断的影响,三维重建完整的新冠状动脉肺炎模型,填补了当前的差距在这方面,为生产新的冠状动脉肺炎假体提供了基础,提高了诊断的准确性。

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