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Novel image fusion quality metrics based on sensor models and image statistics

机译:基于传感器模型和图像统计的新型图像融合质量指标

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This paper presents progress in image fusion modeling. One fusion quality metric based on the Targeting Task performance (TTP) metric and another based on entropy are presented. A human perception test was performed with fused imagery to determine effectiveness of the metrics in predicting image fusion quality. Both fusion metrics first establish which of two source images is ideal in a particular spatial frequency pass band. The fused output of a given algorithm is then measured against this ideal in each pass band. The entropy based fusion quality metric (E-FQM) uses statistical information (entropy) from the images while the Targeting Task Performance fusion quality metric (TTP-FQM) utilizes the TTP metric value in each spatial frequency band. This TTP metric value is the measure of available excess contrast determined by the Contrast Threshold Function (CTF) of the source system and the target contrast. The paper also proposes an image fusion algorithm that chooses source image contributions using a quality measure similar to the TTP-FQM. To test the effectiveness of TTP-FQM and E-FQM in predicting human image quality preferences, SWIR and LWIR imagery of tanks were fused using four different algorithms. A paired comparison test was performed with both source and fused imagery as stimuli. Eleven observers were asked to select which image enabled them to better identify the target. Over the ensemble of test images, the experiment showed that both TTP-FQM and E-FQM were capable of identifying the fusion algorithms most and least preferred by human observers. Analysis also showed that the performance of the TTP-FQM and E-FQM in identifying human image preferences are better than existing fusion quality metrics such as the Weighted Fusion Quality Index and Mutual Information.
机译:本文介绍了图像融合建模的进展。提出了一种基于目标任务绩效(TTP)度量的融合质量度量,另一种基于熵的度量。对融合图像进行了人类感知测试,以确定度量标准在预测图像融合质量方面的有效性。两个融合度量首先确定在特定空间频率通带中两个源图像中的哪个是理想的。然后,针对每个通带中的理想值,测量给定算法的融合输出。基于熵的融合质量度量(E-FQM)使用来自图像的统计信息(熵),而目标任务绩效融合质量度量(TTP-FQM)利用每个空间频带中的TTP度量值。此TTP度量值是由源系统的对比度阈值函数(CTF)和目标对比度确定的可用过量对比度的度量。本文还提出了一种图像融合算法,该算法使用类似于TTP-FQM的质量度量来选择源图像贡献。为了测试TTP-FQM和E-FQM在预测人类图像质量偏好方面的有效性,使用四种不同算法融合了坦克的SWIR和LWIR图像。使用源图像和融合图像作为刺激进行了配对比较测试。要求11名观察员选择使他们能够更好地识别目标的图像。在测试图像的整体上,实验表明TTP-FQM和E-FQM都能够识别人类观察者最喜欢和最不喜欢的融合算法。分析还显示,TTP-FQM和E-FQM在识别人像偏好方面的性能要优于现有的融合质量指标,例如加权融合质量指数和互信息。

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