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Poisson Noise Removal from Mammogram Using Poisson Unbiased Risk Estimation Technique

机译:使用泊松无偏见风险估算技术从乳房X线图中移除泊松噪声

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We present an experimental work on the denoising of mammogram with Poisson noise. Reviewing the literature, it is found that the denoising performance of the multiresolution tools like wavelet, contourlet and curvelet implemented on mammogram with Poisson noise is unique. The first part of the investigation deals with the confirmation of this exceptional performance with our result. The later half implements the recently developed denoising approach called the Poisson Unbiased Risk Estimation-Linear Expansion of Thresholds (PURE-LET) to the Poisson noise corrupted mammogram with an objective to improve the peak signal to noise ratio (PSNR) further. The PURE-LET successfully removes Poisson noise better than the traditional mathematical transforms already mentioned. The computation time and PSNR are also evaluated in the perspective of the cycle spinning technique. This validates the applicability and efficiency of the novel denoising strategy in the field of digital mammography.
机译:我们对猪噪声的乳房X线图的去噪提供了一个实验工作。审查文献,发现,在与泊松噪声的乳房X线照片上实现的小波,轮廓和曲线等多角度工具的去噪表现是独一无二的。调查的第一部分与我们的结果确认了这种特殊表现。后半场实施最近开发的去噪方法称为泊松无偏见的风险估计 - 线性膨胀的阈值(纯粹)到泊松噪声损坏的乳房X线照片,目的是进一步改善峰值信号到噪声比(PSNR)。纯粹的让更好地删除了泊松噪声,而不是已经提到的传统数学变换。还通过循环纺丝技术的透视评估计算时间和PSNR。这验证了数字乳房X线摄影领域新型去噪战略的适用性和效率。

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