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Multimodal Sensor Fusion in Single Thermal Image Super-Resolution

机译:单热图像超分辨率的多模式传感器融合

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With the fast growth in the visual surveillance and security sectors, thermal infrared images have become increasingly necessary in a large variety of industrial applications. This is true even though IR sensors are still more expensive than their RGB counterpart having the same resolution. In this paper, we propose a deep learning solution to enhance the thermal image resolution. The following results are given: (I) Introduction of a multimodal, visual-thermal fusion model that addresses thermal image super-resolution, via integrating high-frequency information from the visual image. (II) Investigation of different network architecture schemes in the literature, their up-sampling methods, learning procedures, and their optimization functions by showing their beneficial contribution to the super-resolution problem. (III) A benchmark ULB17-VT dataset that contains thermal images and their visual images counterpart is presented. (IV) Presentation of a qualitative evaluation of a large test set with 58 samples and 22 raters which shows that our proposed model performs better against state-of-the-arts.
机译:随着视觉监控和安全部门的快速增长,热红外图像在各种工业应用中越来越必要。即使IR传感器比具有相同分辨率的RGB对应物仍然昂贵,这也是如此。在本文中,我们提出了一种深入的学习解决方案来增强热图像分辨率。给出以下结果:(i)通过从视觉图像集成高频信息,引入解决热图像超分辨率的多模式,可视热融合模型。 (ii)通过向超分辨率问题显示有益贡献,对文献中不同网络架构方案,他们的上采样方法,学习程序和优化功能的调查。 (iii)介绍了包含热图像的基准ULB17-VT数据集及其可视图像对应物。 (iv)介绍具有58个样本和22位评价者的大型测试集的定性评估,表明我们所提出的模型更好地对抗最先进。

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