Dept. of Electr. and Comput. Eng., Dayton Univ., OH.
IEEE Trans Image Process. 1997;6(12):1621-33. doi: 10.1109/83.650116.
In many imaging systems, the detector array is not sufficiently dense to adequately sample the scene with the desired field of view. This is particularly true for many infrared focal plane arrays. Thus, the resulting images may be severely aliased. This paper examines a technique for estimating a high-resolution image, with reduced aliasing, from a sequence of undersampled frames. Several approaches to this problem have been investigated previously. However, in this paper a maximum a posteriori (MAP) framework for jointly estimating image registration parameters and the high-resolution image is presented. Several previous approaches have relied on knowing the registration parameters a priori or have utilized registration techniques not specifically designed to treat severely aliased images. In the proposed method, the registration parameters are iteratively updated along with the high-resolution image in a cyclic coordinate-descent optimization procedure. Experimental results are provided to illustrate the performance of the proposed MAP algorithm using both visible and infrared images. Quantitative error analysis is provided and several images are shown for subjective evaluation.
在许多成像系统中,探测器阵列不够密集,无法用所需的视场充分采样场景。这对于许多红外焦平面阵列来说尤其如此。因此,得到的图像可能会严重混叠。本文研究了一种从一系列欠采样帧估计具有较低混叠的高分辨率图像的技术。以前已经研究了几种解决这个问题的方法。然而,在本文中,提出了一种用于联合估计图像配准参数和高分辨率图像的最大后验 (MAP) 框架。以前的一些方法依赖于先验地知道配准参数,或者使用的配准技术不是专门设计用于处理严重混叠图像的。在所提出的方法中,配准参数与高分辨率图像一起在循环坐标下降优化过程中迭代更新。提供了实验结果以说明使用可见和红外图像的所提出的 MAP 算法的性能。提供了定量误差分析,并显示了几张图像进行主观评估。