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Multimodal Sensor Fusion in Single Thermal Image Super-Resolution

机译:单热图像超分辨率中的多模式传感器融合

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摘要

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领域的快速增长,热红外图像已在多种工业应用中变得越来越必要。即使IR传感器比具有相同分辨率的RGB传感器仍然昂贵,这也是事实。在本文中,我们提出了一种深度学习解决方案来增强热图像分辨率。得到以下结果:(Ⅰ)介绍了一种多模态的视觉-热融合模型,该模型通过整合视觉图像中的高频信息来解决热图像的超分辨率问题。 (二)通过研究其对超分辨率问题的有益贡献,研究文献中不同的网络体系结构方案,其上采样方法,学习过程及其优化功能。 (Ⅲ)提出了基准ULB17-VT数据集,其中包含热图像及其对应的可视图像。 (Ⅳ)对58个样本和22个评估者的大型测试集进行定性评估,表明我们提出的模型相对于最新技术具有更好的性能。

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