Simultaneous Temperature Estimation and Nonuniformity Correction From Multiple Frames

Navot Oz;Omri Berman;Nir Sochen;David Mendlovic;Iftach Klapp
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Abstract

IR cameras are widely used for temperature measurements in various applications, including agriculture, medicine, and security. Low-cost IR cameras have the immense potential to replace expensive radiometric cameras in these applications; however, low-cost microbolometer-based IR cameras are prone to spatially variant nonuniformity and to drift in temperature measurements, which limit their usability in practical scenarios. To address these limitations, we propose a novel approach for simultaneous temperature estimation and nonuniformity correction (NUC) from multiple frames captured by low-cost microbolometer-based IR cameras. We leverage the camera’s physical image-acquisition model and incorporate it into a deep-learning architecture termed kernel prediction network (KPN), which enables us to combine multiple frames despite imperfect registration between them. We also propose a novel offset block that incorporates the ambient temperature into the model and enables us to estimate the offset of the camera, which is a key factor in temperature estimation. Our findings demonstrate that the number of frames has a significant impact on the accuracy of the temperature estimation and NUC. Moreover, introduction of the offset block results in significantly improved performance compared to vanilla KPN. The method was tested on real data collected by a low-cost IR camera mounted on an unmanned aerial vehicle, showing only a small average error of $0.27-0.54^{\circ } C$ relative to costly scientific-grade radiometric cameras. Real data collected horizontally resulted in similar errors of $0.48-0.68^{\circ } C$ . Our method provides an accurate and efficient solution for simultaneous temperature estimation and NUC, which has important implications for a wide range of practical applications.
从多个帧同时进行温度估算和非均匀性校正
红外热像仪广泛应用于农业、医疗和安防等领域的温度测量。然而,基于微测辐射热计的低成本红外热像仪容易受到空间变化不均匀性和温度测量漂移的影响,这限制了其在实际应用中的可用性。为了解决这些局限性,我们提出了一种新方法,利用基于微测辐射热计的低成本红外热像仪捕获的多帧图像,同时进行温度估计和非均匀性校正(NUC)。我们利用相机的物理图像采集模型,并将其纳入深度学习架构,称为核预测网络(KPN),这使我们能够结合多个帧,尽管它们之间的注册并不完美。我们还提出了一个新颖的偏移块,它将环境温度纳入模型,使我们能够估计相机的偏移量,这是温度估计的一个关键因素。我们的研究结果表明,帧数对温度估计和 NUC 的准确性有显著影响。此外,与 vanilla KPN 相比,偏移块的引入大大提高了性能。该方法在无人机上安装的低成本红外摄像机收集的真实数据上进行了测试,结果显示,相对于昂贵的科学级红外摄像机,该方法的平均误差仅为 0.27-0.54^{\circ } C$。C$ 的平均误差。水平采集的真实数据也产生了类似的误差,为 0.48-0.68^{\circ } C$ 。C$ .我们的方法为同时进行温度估算和 NUC 提供了精确而高效的解决方案,对广泛的实际应用具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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