Krishnan D, Chong M N, Kalra S
IEEE Trans Image Process. 1999;8(8):1139-42. doi: 10.1109/83.777096.
Gibbs-Markov random field (GMRF) modeling has been shown to be a robust method in the detection of missing-data in image sequences for a video restoration application. However, the maximum a posteriori probability (MAP) estimation of the GMRF model requires computationally expensive optimization algorithms in order to achieve an optimal solution. The continuous relaxation labeling (RL) is explored in this paper as an efficient approach for solving the optimization problem. The conversion of the original combinatorial optimization into a continuous RL formulation is presented. The performance of the RL formulation is analyzed and compared with that of other optimization methods such as stochastic simulated annealing, iterated conditional modes, and mean field annealing. The results show that RL holds out promise as an optimization algorithm for problems in image sequence processing.
吉布斯 - 马尔可夫随机场(GMRF)建模已被证明是一种用于视频恢复应用中图像序列缺失数据检测的稳健方法。然而,GMRF模型的最大后验概率(MAP)估计需要计算成本高昂的优化算法才能获得最优解。本文探索了连续松弛标记(RL)作为解决优化问题的一种有效方法。提出了将原始组合优化转换为连续RL公式的方法。分析了RL公式的性能,并与其他优化方法(如随机模拟退火、迭代条件模式和平均场退火)进行了比较。结果表明,RL有望成为图像序列处理问题的一种优化算法。