Dept. of Comput. Sci., Chung-Hua Polytech. Inst., Hsinchu.
IEEE Trans Image Process. 1995;4(5):603-19. doi: 10.1109/83.382495.
In this paper, we describe an automatic unsupervised texture segmentation scheme using hidden Markov models (HMMs). First, the feature map of the image is formed using Laws' micromasks and directional macromasks. Each pixel in the feature map is represented by a sequence of 4-D feature vectors. The feature sequences belonging to the same texture are modeled as an HMM. Thus, if there are M different textures present in an image, there are M distinct HMMs to be found and trained. Consequently, the unsupervised texture segmentation problem becomes an HMM-based problem, where the appropriate number of HMMs, the associated model parameters, and the discrimination among the HMMs become the foci of our scheme. A two-stage segmentation procedure is used. First, coarse segmentation is used to obtain the approximate number of HMMs and their associated model parameters. Then, fine segmentation is used to accurately estimate the number of HMMs and the model parameters. In these two stages, the critical task of merging the similar HMMs is accomplished by comparing the discrimination information (DI) between the two HMMs against a threshold computed from the distribution of all DI's. A postprocessing stage of multiscale majority filtering is used to further enhance the segmented result. The proposed scheme is highly suitable for pipeline/parallel implementation. Detailed experimental results are reported. These results indicate that the present scheme compares favorably with respect to other successful schemes reported in the literature.
在本文中,我们描述了一种使用隐马尔可夫模型(HMM)的自动无监督纹理分割方案。首先,使用 Laws 微掩模和方向宏掩模形成图像的特征图。特征图中的每个像素都由一个 4-D 特征向量序列表示。特征序列属于同一纹理建模为 HMM。因此,如果图像中有 M 种不同的纹理,则需要找到并训练 M 个不同的 HMM。因此,无监督纹理分割问题成为基于 HMM 的问题,其中适当的 HMM 数量、相关模型参数以及 HMM 之间的区分成为我们方案的重点。使用两阶段分割过程。首先,粗分割用于获得 HMM 的近似数量及其相关模型参数。然后,精细分割用于准确估计 HMM 的数量和模型参数。在这两个阶段,通过将两个 HMM 之间的区分信息(DI)与从所有 DI 分布计算的阈值进行比较,完成了合并相似 HMM 的关键任务。使用多尺度多数滤波的后处理阶段进一步增强分割结果。所提出的方案非常适合流水线/并行实现。报告了详细的实验结果。这些结果表明,与文献中报道的其他成功方案相比,本方案具有优势。