Performance Analysis of Enhancement Methods on Fetal Ultrasound Images

Rika Favoria Gusa, Risanuri Hidayat, H. A. Nugroho
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Abstract

Ultrasound imaging is widely used in medical diagnosis because it is non-invasive and free from ionizing radiation. However, ultrasound images have low contrast and contain speckle noise, making diagnosis difficult. Therefore, speckle noise reduction and image contrast enhancement are important prerequisites in ultrasound image processing. Many methods can be used in the ultrasound image pre-processing stage. In this paper, fetal ultrasound images were enhanced in contrast and sharpness using four enhancement methods, namely histogram equalization (HE), contrast limited adaptive histogram equalization (CLAHE), unsharp masking (UM), and maximum local variation-based unsharp masking (MLVUM). These methods were applied to ultrasound images in two ways. Those are without filtering them and by first filtering them using a speckle reducing anisotropic diffusion (SRAD) filter. A comparative analysis was carried out on the performance of the four enhancement methods using the absolute mean brightness error (AMBE), average local contrast (ALC), and average gradient (AG) parameters. The results show that UM and MLVUM work better in increasing the contrast of fetal ultrasound images than HE and CLAHE. Applying the HE, CLAHE, UM, and MLVUM methods without filtering produces ultrasound images with better sharpness and contrast than enhanced images involving filtering but causing speckle noise amplification.
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胎儿超声图像增强方法的性能分析
超声成像因其无创、无电离辐射等优点,在医学诊断中得到了广泛的应用。然而,超声图像对比度低且含有斑点噪声,给诊断带来困难。因此,降噪降噪和增强图像对比度是超声图像处理的重要前提。超声图像预处理阶段可采用多种方法。本文采用直方图均衡化(HE)、对比度有限自适应直方图均衡化(CLAHE)、非锐化掩蔽(UM)和基于最大局部变化的非锐化掩蔽(MLVUM)四种增强方法增强胎儿超声图像的对比度和清晰度。这些方法在超声图像上有两种应用。这些是没有过滤的,首先使用散斑减少各向异性扩散(SRAD)滤波器过滤它们。利用绝对平均亮度误差(AMBE)、平均局部对比度(ALC)和平均梯度(AG)参数对四种增强方法的性能进行了对比分析。结果表明,UM和MLVUM提高胎儿超声图像对比度的效果优于HE和CLAHE。采用不滤波的HE、CLAHE、UM和MLVUM方法产生的超声图像清晰度和对比度优于滤波后的增强图像,但会导致散斑噪声放大。
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