IEEE Trans Pattern Anal Mach Intell. 2012 Jan;34(1):94-109. doi: 10.1109/TPAMI.2011.109. Epub 2011 May 19.
Comparison of image processing techniques is critically important in deciding which algorithm, method, or metric to use for enhanced image assessment. Image fusion is a popular choice for various image enhancement applications such as overlay of two image products, refinement of image resolutions for alignment, and image combination for feature extraction and target recognition. Since image fusion is used in many geospatial and night vision applications, it is important to understand these techniques and provide a comparative study of the methods. In this paper, we conduct a comparative study on 12 selected image fusion metrics over six multiresolution image fusion algorithms for two different fusion schemes and input images with distortion. The analysis can be applied to different image combination algorithms, image processing methods, and over a different choice of metrics that are of use to an image processing expert. The paper relates the results to an image quality measurement based on power spectrum and correlation analysis and serves as a summary of many contemporary techniques for objective assessment of image fusion algorithms.
比较图像处理技术对于确定使用哪种算法、方法或指标来进行增强图像评估至关重要。图像融合是各种图像增强应用的热门选择,例如两个图像产品的叠加、图像分辨率的细化以进行对齐,以及用于特征提取和目标识别的图像组合。由于图像融合在许多地理空间和夜视应用中都有使用,因此了解这些技术并对这些方法进行比较研究非常重要。在本文中,我们针对两种不同的融合方案和带有失真的输入图像,对 6 种多分辨率图像融合算法中的 12 种选定图像融合指标进行了比较研究。该分析可应用于不同的图像组合算法、图像处理方法以及对图像处理专家有用的不同选择的指标。本文将结果与基于功率谱和相关分析的图像质量测量联系起来,并作为许多用于客观评估图像融合算法的当代技术的总结。