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A structural similarity-inspired performance assessment model for multisensor image registration algorithms

机译:多传感器图像登记算法的结构相似性灵感性能评估模型

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摘要

In order to assess the performance of multisensor image registration algorithms that are used in the multirobot information fusion, we propose a model based on structural similarity whose name is vision registration assessment model. First of all, this article introduces a new image concept named superimposed image for testing subjective and objective assessment methods. Therefore, we assess the superimposed image but not the registered image, which is different from previous image registration assessment methods that usually use reference and sensed images. Then, we calculate eight assessment indicators from different aspects for superimposed images. After that, vision registration assessment model fuses the eight indicators using canonical correlation analysis, which is used for evaluating the quality of an image registration results in different aspects. Finally, three kinds of images which include optical images, infrared images, and SAR images are used to test vision registration assessment model. After evaluating three state-of-the-art image registration methods, experiments indict that the proposed structural similarity-motivated model achieved almost same evaluation results with that of the human object with the consistency rate of 98.3%, which shows that vision registration assessment model is efficient and robust for evaluating multisensor image registration algorithms. Moreover, vision registration assessment model is independent of the emotional factors and outside environment, which is different from the human.
机译:为了评估在多管道信息融合中使用的多传感器图像配准算法的性能,我们提出了一种基于结构相似性的模型,其名称是视觉登记评估模型。首先,本文介绍了一个名为叠加图像的新图像概念,用于测试主观和客观评估方法。因此,我们评估叠加图像,但不是注册图像,这与通常使用参考和感测图像的先前图像配准评估方法不同。然后,我们计算来自叠加图像的不同方面的八个评估指标。之后,视觉登记评估模型使用规范相关性分析来融合八个指​​标,用于评估图像配准结果的不同方面的质量。最后,三种包括光学图像,红外图像和SAR图像的图像用于测试视觉登记评估模型。在评估三种最先进的图像登记方法之后,实验指导,所提出的结构相似性 - 激励模型与人体对象的效率几乎相同的评价结果​​为98.3%,显示视觉登记评估模型对评估多用户图像配准算法是高效且坚固的。此外,视觉登记评估模型与情绪因素和外部环境无关,与人类不同。

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