Hu Qingmao, Hou Zujun, Nowinski Wieslaw L
Biomedical Imaging Laboratory, Agency for Science Technology and Research, Singapore.
IEEE Trans Image Process. 2006 Jan;15(1):228-40. doi: 10.1109/tip.2005.860348.
A novel thresholding approach to confine the intensity frequency range of the object based on supervision is introduced. It consists of three steps. First, the region of interest (ROI) is determined in the image. Then, from the histogram of the ROI, the frequency range in which the proportion of the background to the ROI varies is estimated through supervision. Finally, the threshold is determined by minimizing the classification error within the constrained variable background range. The performance of the approach has been validated against 54 brain MR images, including images with severe intensity inhomogeneity and/or noise, CT chest images, and the Cameraman image. Compared with nonsupervised thresholding methods, the proposed approach is substantially more robust and more reliable. It is also computationally efficient and can be applied to a wide class of computer vision problems, such as character recognition, fingerprint identification, and segmentation of a wide variety of medical images.
介绍了一种基于监督来限制物体强度频率范围的新型阈值处理方法。它包括三个步骤。首先,在图像中确定感兴趣区域(ROI)。然后,从ROI的直方图中,通过监督估计背景与ROI比例变化的频率范围。最后,通过在受限的可变背景范围内最小化分类误差来确定阈值。该方法的性能已针对54幅脑部磁共振图像(包括具有严重强度不均匀性和/或噪声的图像)、胸部CT图像和摄影师图像进行了验证。与无监督阈值处理方法相比,该方法具有更高的鲁棒性和可靠性。它在计算上也很高效,并且可以应用于广泛的计算机视觉问题,如字符识别、指纹识别以及各种医学图像的分割。