Xie Jun, Jiang Yifeng, Tsui Hung-Tat, Heng Pheng-Ann
Department of Computer Science and Engineering, and Shun Hing Institute of Advanced Engineering, Chinese University of Hong Kong, Shatin, N.T., Hong Kong.
IEEE Trans Biomed Eng. 2006 Nov;53(11):2300-9. doi: 10.1109/TBME.2006.878088.
In this paper, we present an approach for medical ultrasound (US) image enhancement. It is based on a novel perceptual saliency measure which favors smooth, long curves with constant curvature. The perceptual salient boundaries of tissues in US images are enhanced by computing the saliency of directional vectors in the image space, via a local searching algorithm. Our measure is generally determined by curvature changes, intensity gradient and the interaction of neighboring vectors. To restrain speckle noise during the enhancement process, an adaptive speckle suspension term is also combined into the proposed saliency measure. The results obtained on both simulated images and medical US data reveal superior performance of the novel approach over a number of commonly used speckle filters. Applications of US image segmentation show that although the proposed algorithm cannot remove the speckle noise completely and may discard weak anatomical structures in some case, it still provides a considerable gain to US image processing for computer-aided diagnosis.
在本文中,我们提出了一种医学超声(US)图像增强方法。它基于一种新颖的感知显著性度量,该度量有利于具有恒定曲率的平滑长曲线。通过局部搜索算法计算图像空间中方向向量的显著性,增强了超声图像中组织的感知显著边界。我们的度量通常由曲率变化、强度梯度和相邻向量的相互作用决定。为了在增强过程中抑制斑点噪声,还将自适应斑点悬浮项组合到所提出的显著性度量中。在模拟图像和医学超声数据上获得的结果表明,该新方法比许多常用的斑点滤波器具有更优越的性能。超声图像分割的应用表明,尽管所提出的算法不能完全去除斑点噪声,并且在某些情况下可能会丢弃较弱的解剖结构,但它仍然为计算机辅助诊断的超声图像处理提供了显著的增益。