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Multiscale hybrid algorithm for pre-processing of ultrasound images

机译:用于超声图像预处理的多尺度混合算法

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Background: One of the diagnostic tools for breast cancer screening is the ultrasound. Ultrasounds are characterized by low cost and non-invasive patterns. A major drawback of ultrasound is the multiplicative speckle noise. Speckle noise limits the effectiveness of images thereby reducing the efficiency of the test. This paper proposes a new algorithm to reduce noise.Methods: The method is based on the combination of the multiscale approach, the wiener filter, and the new fast bilateral filter. A multiscale image was first created. Subsequently, the wiener filter was used for initial filtering and to reduce the mean square error of the multiscaled images. Finally, the new fast bilateral filter was used to remove speckle noise.Results: The algorithm was tested on 50 synthetic images degraded by speckle noise with varying intensity and 250 breast ultrasound (BUS) images from two datasets. The results were compared with selected state-of-the-art filters. The proposed approach shows better performance in terms of standard noise evaluation measures. The noise reduction in the US images of breast cancer (BUS) has been verified by selected conventional segmentation procedures. Results indicate that the proposed method reduced speckle better than other methods. Specifically, the proposed method produced a structural similarity index measure value of 95% for both benign and malignant tumors. In addition a peak signal-to-noise ratio of 30.41db and 30.75db for benign and malignant tumors were obtained. The proposed filter also achieves high accuracy in terms of the segmentation measures.Conclusions: The proposed speckle noise reduction algorithm achieves better accuracies than other competing filters. The algorithm will act as a tool for speckle reduction in breast ultrasound images.
机译:背景:乳腺癌筛查的诊断工具之一是超声波。超声波的特征在于低成本和非侵入模式。超声波的主要缺点是乘法斑点噪声。散斑噪声限制了图像的有效性,从而降低了测试的效率。本文提出了一种降低噪声的新算法。方法:该方法基于多尺度方法,维纳滤波器和新的快速双边滤波器的组合。首次创建多尺度图像。随后,将维纳滤波器用于初始滤波,并减少多尺寸图像的均方误差。最后,使用新的快速双侧滤波器去除斑点噪声。结果:在50个合成图像上测试算法,通过两个数据集的不同强度和250个乳房超声(总线)图像劣化。将结果与选定的最新过滤器进行比较。所提出的方法在标准噪声评估措施方面表现出更好的性能。通过选定的常规分割程序验证了乳腺癌(总线)的美国图像的降噪。结果表明,该方法比其他方法更好地减少散斑。具体地,所提出的方法为良性和恶性肿瘤产生了95%的结构相似度指标值。此外,获得了30.41db和30.75dB的峰值信噪比,用于良性和恶性肿瘤。所提出的滤波器还可以在分割措施方面实现高精度。结论:所提出的散斑降噪算法比其他竞争滤波器更好地实现了更好的准确性。该算法将作为乳房超声图像散斑减少的工具。

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