Two-region image segmentation is the process of dividing an image into two regions of interest, i.e., the foreground and the background. To this aim, Chan et al. [Chan, Esedo\=glu, Nikolova, SIAM Journal on Applied Mathematics 66(5), 1632-1648, 2006] designed a model well suited for smooth images. One drawback of this model is that it may produce a bad segmentation when the image contains oscillatory components. Based on a cartoon-texture decomposition of the image to be segmented, we propose a new model that is able to produce an accurate segmentation of images also containing noise or oscillatory information like texture. The novel model leads to a non-smooth constrained optimization problem which we solve by means of the ADMM method. The convergence of the numerical scheme is also proved. Several experiments on smooth, noisy, and textural images show the effectiveness of the proposed model.
翻译:两个区域的图像分割过程是将图像分割成两个感兴趣的区域,即前景和背景。为此,Chan等人(Chan, Esedo ⁇ glu, Nikolova, SIM Journal on Appist Mamatics 66(5), 1632-1648, 2006)设计了一个非常适合光滑图像的模型。这个模型的一个缺点是,如果图像包含血管组件,它可能产生坏的分割。根据要分割的图像的卡通文字分解,我们提议了一个新的模型,能够产生含有噪音或血管信息等纹理的图像的准确分解。这个新模型导致一个非悬浮限制的优化问题,我们通过ADMM方法加以解决。数字图案的趋同也得到了证明。关于光滑动、振动和纹理图像的实验显示了拟议模型的有效性。