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Efficient medical image enhancement based on CNN-FBB model

机译:基于CNN-FBB模型的高效医学图像增强

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摘要

Medical image quality requirements have been increasingly stringent with the recent developments of medical technology. To meet clinical diagnosis needs, an effective medical image enhancement method based on convolutional neural networks (CNNs) and frequency band broadening (FBB) is proposed. Curvelet transform is used to deal with medical data by obtaining the curvelet coefficient in each scale and direction, and the generalised cross-validation is implemented to select the optimal threshold for performing denoising processing. Meanwhile, the cycle spinning scheme is used to wipe off the visible ringing effects along the edges of medical images. Then, FBB and a new CNN model based on the retinex model are used to improve the processed image resolution. Eventually, pixel-level fusion is made between two enhanced medical images from CNN and FBB. In the authors' study, 50 groups of medical magnetic resonance imaging, X-ray, and computed tomography images in total have been studied. The experimental results indicate that the final enhanced image using the proposed method outperforms other methods. The resolution and the edge details of the processed image are significantly enhanced, providing a more effective and accurate basis for medical workers to diagnose diseases.
机译:随着医学技术的最新发展,医学图像质量要求越来越严格。为了满足临床诊断需求,提出了一种基于卷积神经网络(CNN)和频带扩展(FBB)的有效医学图像增强方法。通过获取各个尺度和方向上的Curvelet系数,使用Curvelet变换处理医学数据,并进行广义交叉验证以选择最佳阈值进行降噪处理。同时,循环旋转方案用于擦除沿医学图像边缘的可见振铃效果。然后,使用FBB和基于retinex模型的新CNN模型来提高处理后的图像分辨率。最终,在来自CNN和FBB的两个增强医学图像之间进行了像素级融合。在作者的研究中,总共研究了50组医学磁共振成像,X射线和计算机断层扫描图像。实验结果表明,采用该方法的最终增强图像性能优于其他方法。显着提高了处理后图像的分辨率和边缘细节,为医务人员诊断疾病提供了更加有效和准确的基础。

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