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Survey of Image Denoising Methods for Medical Image Classification

机译:医学图像分类的图像去噪方法研究

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Medical imaging devices, such as X-ray machines, inherently produce images that suffer from visual noise. Our objectives were to (i.) determine the effect of image denoising on a medical image classification task, and (ii.) determine if there exists a correlation between image denoising performance and medical image classification performance. We performed the medical image classification task on chest X-rays using the DenseNet-121 convolutional neural network (CNN) and used the peak signal-to-noise ratio (PSNR) and structural similarity (SSIM) metrics as the image denoising performance measures. We first found that different denoising methods can make a statistically significant difference in classification performance for select labels. We also found that denoising methods affect fine-tuned models more than randomly-initialized models and that fine-tuned models have significantly higher and more uniform performance than randomly-initialized models. Lastly, we found that there is no significant correlation between PSNR and SSIM values and classification performance for our task.
机译:诸如X射线机之类的医学成像设备固有地会产生遭受视觉噪声影响的图像。我们的目标是(i。)确定图像降噪对医学图像分类任务的影响,以及(ii。)确定图像降噪性能与医学图像分类性能之间是否存在关联。我们使用DenseNet-121卷积神经网络(CNN)对胸部X射线执行了医学图像分类任务,并使用峰值信噪比(PSNR)和结构相似度(SSIM)度量作为图像降噪性能指标。我们首先发现,不同的降噪方法可以在选择标签的分类性能方面产生统计学上的显着差异。我们还发现,去噪方法对微调模型的影响要大于随机初始化的模型,而且微调模型的性能要比随机初始化的模型高得多,并且性能更均匀。最后,我们发现对于我们的任务,PSNR和SSIM值与分类性能之间没有显着相关性。

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