首页> 外国专利> Image artifact reduction using maximum likelihood parameter estimation

Image artifact reduction using maximum likelihood parameter estimation

机译:使用最大似然参数估计的图像伪影减少

摘要

A technique for post-processing decoded compressed images to reduce decoding-related artifacts employs a maximum likelihood estimation of an original image f. The decoded image is modeled as a montage of "flat surfaces" of different intensities, where the number of flat surfaces and their intensities are generally different in different regions of the decoded image. The intensity of each pixel is conditionally adjusted to that of a corresponding flat surface in a window region surrounding the pixel. In a general algorithm, the flat surface model is fitted to the observed image by estimating the model parameters using the "k-means" algorithm and a hierarchical clustering algorithm. A cluster similarity measure (CSM) is used to determine the number of intensity clusters, and hence flat surfaces, in the model of a window region surrounding a pixel of interest. The pixel intensity is adjusted to an estimated value which is the mean intensity of the cluster in which the pixel falls. A simplified version of the method employs a three-cluster model in which the cluster centers are initialized by a deterministic rule. This simplified method is non-iterative in nature, thus requiring fewer computational resources.
机译:用于对解码的压缩图像进行后处理以减少与解码有关的伪像的技术采用原始图像f的最大似然估计。解码图像被建模为不同强度的“平面”的蒙太奇,其中在解码图像的不同区域中平面的数量及其强度通常是不同的。在围绕像素的窗口区域中,将每个像素的强度有条件地调整为相应平面的强度。在一般算法中,通过使用“ k-均值”算法和分层聚类算法估计模型参数,将平面模型拟合到观察图像。聚类相似性度量(CSM)用于确定围绕感兴趣像素的窗口区域模型中强度聚类的数量,从而确定平面。将像素强度调整为估计值,该估计值是像素落入的群集的平均强度。该方法的简化版本采用三群集模型,其中群集中心由确定性规则初始化。这种简化的方法本质上是非迭代的,因此需要较少的计算资源。

著录项

相似文献

  • 专利
  • 外文文献
  • 中文文献
获取专利

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号