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Scene-based Non-uniformity Correction using Complementary Fixed Pattern Noise Models

机译:基于场景的非均匀性校正使用互补固定图案噪声模型

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We propose a novel scene-based non-uniformity correction (NUC) scheme for infrared focal plane array (FPA) detectors to account for both high-frequency and low-frequency fixed pattern noise (FPN). High-frequency FPN can be significantly reduced by the recent scene based NUC algorithms. However, low-frequency FPN caused by stray light, optical effects, heat dissipation and so forth, is commonly compensated by calibration based NUC methods. In this work, we aim to reduce both the low-frequency and high frequency components of FPN by using an efficient combination of registration based and constant statistics based approaches. We exploit scene variations through the video sequence and find the underlying low-frequency noise by smartly averaging frames based on their motion and detail content. Thus, we add the generalization power of constant statistics approach to existing scene-based NUC methods to obtain lower FPN in both high-frequency and low-frequency components. The performance of the proposed method is experimented on a public dataset corrupted by real FPN and evaluated by PSNR metric in comparison to a state-of-the-art scene-based NUC method.
机译:我们提出了一种用于红外焦平面阵列(FPA)检测器的新颖的基于场景的非均匀性校正(NUC)方案,以考虑高频和低频固定图案噪声(FPN)。最近的基于场景的NUC算法可以显着降低高频FPN。然而,由杂散光,光学效应,散热等引起的低频FPN通常通过基于校准的NUC方法来补偿。在这项工作中,我们的目标是通过使用基于登记和恒定的基于统计方法的高效组合来减少FPN的低频和高频分量。我们通过视频序列利用场景变化,并根据其运动和详细内容巧妙平均帧找到底层的低频噪声。因此,我们为现有场景的NUC方法添加了恒定统计方法的泛化功率,以获得高频和低频分量的较低FPN。所提出的方法的性能在通过真实FPN损坏的公共数据集上进行实验,并由PSNR度量评估与基于最先进的场景的NUC方法相比。

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