IEEE Trans Image Process. 2017 Jul;26(7):3479-3491. doi: 10.1109/TIP.2017.2695898. Epub 2017 Apr 19.
The capability to automatically evaluate the quality of long wave infrared (LWIR) and visible light images has the potential to play an important role in determining and controlling the quality of a resulting fused LWIR-visible light image. Extensive work has been conducted on studying the statistics of natural LWIR and visible images. Nonetheless, there has been little work done on analyzing the statistics of fused LWIR and visible images and associated distortions. In this paper, we analyze five multi-resolution-based image fusion methods in regards to several common distortions, including blur, white noise, JPEG compression, and non-uniformity. We study the natural scene statistics of fused images and how they are affected by these kinds of distortions. Furthermore, we conducted a human study on the subjective quality of pristine and degraded fused LWIR-visible images. We used this new database to create an automatic opinion-distortion-unaware fused image quality model and analyzer algorithm. In the human study, 27 subjects evaluated 750 images over five sessions each. We also propose an opinion-aware fused image quality analyzer, whose relative predictions with respect to other state-of-the-art models correlate better with human perceptual evaluations than competing methods. An implementation of the proposed fused image quality measures can be found at https://github.com/ujemd/NSS-of-LWIR-and-Vissible-Images. Also, the new database can be found at http://bit.ly/2noZlbQ.
自动评估长波红外(LWIR)和可见光图像质量的能力有可能在确定和控制融合后的 LWIR-可见光图像的质量方面发挥重要作用。已经对自然 LWIR 和可见光图像的统计特性进行了广泛的研究。然而,对于分析融合后的 LWIR 和可见光图像及其相关失真的统计特性的工作却很少。在本文中,我们分析了五种基于多分辨率的图像融合方法,针对几种常见的失真,包括模糊、白噪声、JPEG 压缩和非均匀性。我们研究了融合图像的自然场景统计特性以及这些失真如何影响它们。此外,我们对原始和退化的融合 LWIR-可见光图像的主观质量进行了人类研究。我们使用这个新的数据库创建了一个自动的、不考虑意见的融合图像质量模型和分析器算法。在人类研究中,27 名受试者在五个会话中每个会话评估了 750 张图像。我们还提出了一种意见感知的融合图像质量分析器,其相对预测与其他最先进的模型相比,与人类感知评估的相关性更好,优于竞争方法。所提出的融合图像质量度量的实现可以在 https://github.com/ujemd/NSS-of-LWIR-and-Vissible-Images 上找到。此外,新的数据库可以在 http://bit.ly/2noZlbQ 上找到。