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首页> 外文期刊>International Journal of Wavelets, Multiresolution and Information Processing >DENOISING AND ENHANCEMENT OF MAMMOGRAPHIC IMAGES UNDER THE ASSUMPTION OF HETEROSCEDASTIC ADDITIVE NOISE BY AN OPTIMAL SUBBAND THRESHOLDING
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DENOISING AND ENHANCEMENT OF MAMMOGRAPHIC IMAGES UNDER THE ASSUMPTION OF HETEROSCEDASTIC ADDITIVE NOISE BY AN OPTIMAL SUBBAND THRESHOLDING

机译:通过优化Subband阈值假设在异方差加性噪声的作用下对乳腺X线图像的去噪和增强

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摘要

Mammographic images suffer from low contrast and signal dependent noise, and a very small size of tumoral signs is not easily detected, especially for an early diagnosis of breast cancer. In this context, many methods proposed in literature fail for lack of generality. In particular, too weak assumptions on the noise model, e.g., stationary normal additive noise, and an inaccurate choice of the wavelet family that is applied, can lead to an information loss, noise emphasizing, unacceptable enhancement results, or in turn an unwanted distortion of the original image aspect. In this paper, we consider an optimal wavelet thresholding, in the context of Discrete Dyadic Wavelet Transforms, by directly relating all the parameters involved in both denoising and contrast enhancement to signal dependent noise variance (estimated by a robust algorithm) and to the size of cancer signs. Moreover, by performing a reconstruction from a zero-approximation in conjunction with a Gaussian smoothing filter, we are able to extract the background and the foreground of the image separately, as to compute suitable contrast improvement indexes. The whole procedure will be tested on high resolution X-ray mammographic images and compared with other techniques. Anyway, the visual assessment of the results by an expert radiologist will be also considered as a subjective evaluation.
机译:乳腺摄影图像的对比度低,信号依赖噪声小,很难发现很小的肿瘤体征,特别是对于乳腺癌的早期诊断。在这种情况下,文献中提出的许多方法都缺乏通用性。特别是,对噪声模型的假设太弱,例如平稳的正常加性噪声,以及所应用的小波族选择不正确,可能导致信息丢失,噪声加重,增强结果不可接受,或者导致不必要的失真原始图像方面。在本文中,我们通过将离散降噪和对比度增强中涉及的所有参数直接与信号相关的噪声方差(通过鲁棒算法估算)直接相关,考虑了在离散二进小波变换的背景下的最优小波阈值。癌症迹象。此外,通过结合高斯平滑滤波器从零近似值进行重构,我们能够分别提取图像的背景和前景,以计算出合适的对比度改善指标。整个过程将在高分辨率X射线乳腺摄影图像上进行测试,并与其他技术进行比较。无论如何,由专业放射科医生对结果进行的视觉评估也将被视为主观评估。

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