Dept. of Electr. & Comput. Eng., Arizona Univ., Tucson, AZ.
IEEE Trans Med Imaging. 1996;15(2):218-29. doi: 10.1109/42.491423.
Clusters of fine, granular microcalcifications in mammograms may be an early sign of disease. Individual grains are difficult to detect and segment due to size and shape variability and because the background mammogram texture is typically inhomogeneous. The authors develop a 2-stage method based on wavelet transforms for detecting and segmenting calcifications. The first stage is based on an undecimated wavelet transform, which is simply the conventional filter bank implementation without downsampling, so that the low-low (LL), low-high (LH), high-low (HL), and high-high (HH) sub-bands remain at full size. Detection takes place in HH and the combination LH+HL. Four octaves are computed with 2 inter-octave voices for finer scale resolution. By appropriate selection of the wavelet basis the detection of microcalcifications in the relevant size range can be nearly optimized. In fact, the filters which transform the input image into HH and LH+HL are closely related to prewhitening matched filters for detecting Gaussian objects (idealized microcalcifications) in 2 common forms of Markov (background) noise. The second stage is designed to overcome the limitations of the simplistic Gaussian assumption and provides an accurate segmentation of calcification boundaries. Detected pixel sites in HH and LH+HL are dilated then weighted before computing the inverse wavelet transform. Individual microcalcifications are greatly enhanced in the output image, to the point where straightforward thresholding can be applied to segment them. FROG curves are computed from tests using a freely distributed database of digitized mammograms.
乳腺 X 线照片中的细颗粒状微钙化簇可能是疾病的早期迹象。由于颗粒的大小和形状变化以及乳腺 X 线照片背景纹理通常不均匀,单个颗粒很难检测和分割。作者开发了一种基于小波变换的两阶段方法,用于检测和分割钙化。第一阶段基于非抽取小波变换,它只是没有下采样的传统滤波器组实现,因此低低(LL)、低高(LH)、高低(HL)和高高(HH)子带保持全尺寸。检测发生在 HH 和 LH+HL 组合中。计算了四个八度,每个八度有两个间八度音,以获得更精细的比例分辨率。通过适当选择小波基,可以近乎最优地检测到相关尺寸范围内的微钙化。事实上,将输入图像转换为 HH 和 LH+HL 的滤波器与检测高斯物体(理想化微钙化)的预白化匹配滤波器密切相关,高斯物体出现在两种常见的马尔可夫(背景)噪声中。第二阶段旨在克服简单高斯假设的局限性,并提供钙化边界的准确分割。在计算逆小波变换之前,对 HH 和 LH+HL 中的检测到的像素点进行膨胀和加权。在输出图像中,单个微钙化被大大增强,以至于可以直接应用阈值来分割它们。使用免费分发的数字化乳腺 X 线照片数据库进行测试后,计算了 FROG 曲线。