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Joint estimation of unknown radiometric data, gain, and offset from thermal images

机译:从热图像联合估计未知放射线数据,增益和偏移

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摘要

Low cost, weight, and size microbolometer-based thermal focal plane arrays are attractive for thermal-imaging applications. Under environmental loads like those in agricultural remote sensing, these cameras tend to suffer from drift in gain and offset with time and thus require constant calibration. Our goal is to skip this step via computational imaging. In a previous work we estimated the unknown offset value and radiometric image of an object, given the calibrated gain, from a pair of successive images taken at two different blur levels, eliminating the need for offset calibration due to temperature variation. Here, we extend our model to a case with unknown gain and offset. We show that these values, as well as the objects' radiometric value, can be found jointly by minimizing a cost function relying on N pairs of blurred and sharp images. The method addresses both space-invariant and space-variant cases. Simulations show promising accuracy with error characterized by root mean squared error of less than 1.6 degrees C. (C) 2018 Optical Society of America
机译:基于低成本,重量和尺寸的基于微生物计的热焦平面阵列对于热成像应用是具有吸引力的。在像农业遥感的环境载荷下,这些相机往往会随着时间的推移而遭受增益和偏移,因此需要恒定校准。我们的目标是通过计算成像来跳过这一步。在先前的工作中,我们估计了给定校准增益的对象的未知的偏移值和辐射图像,从两个不同的模糊水平拍摄的一对连续图像中,消除了由于温度变化导致偏移校准的需要。在这里,我们将我们的模型扩展到具有未知增益和偏移的情况。我们表明这些值以及物体的辐射值可以通过最小化依赖于N对模糊和清晰图像的成本函数来共同找到。该方法解决了空间不变和空间变量的情况。模拟显示有希望的准确性,以误差为特征,其均匀平方误差小于1.6摄氏度。(c)2018年光学学会

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  • 来源
    《Applied optics》 |2018年第36期|共12页
  • 作者单位

    Agr Res Org Volcani Ctr Inst Agr Engn Informat &

    Mechanizat Engn Bet Dagan Israel;

    Agr Res Org Volcani Ctr Inst Agr Engn Informat &

    Mechanizat Engn Bet Dagan Israel;

    Agr Res Org Volcani Ctr Inst Agr Engn Informat &

    Mechanizat Engn Bet Dagan Israel;

    Tel Aviv Univ Dept Math IL-69978 Tel Aviv Israel;

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  • 正文语种 eng
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