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Multifocus Image Fusion Using a Sparse and Low-Rank Matrix Decomposition for Aviator’s Night Vision Goggle

机译:使用稀疏和低秩矩阵分解的多焦点图像融合,用于飞行员的夜视护目镜

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摘要

This study proposed the concept of sparse and low-rank matrix decomposition to address the need for aviator’s night vision goggles (NVG) automated inspection processes when inspecting equipment availability. First, the automation requirements include machinery and motor-driven focus knob of NVGs and image capture using cameras to achieve autofocus. Traditionally, passive autofocus involves first computing of sharpness of each frame and then use of a search algorithm to quickly find the sharpest focus. In this study, the concept of sparse and low-rank matrix decomposition was adopted to achieve autofocus calculation and image fusion. Image fusion can solve the multifocus problem caused by mechanism errors. Experimental results showed that the sharpest image frame and its nearby frame can be image-fused to resolve minor errors possibly arising from the image-capture mechanism. In this study, seven samples and 12 image-fusing indicators were employed to verify the image fusion based on variance calculated in a discrete cosine transform domain without consistency verification, with consistency verification, structure-aware image fusion, and the proposed image fusion method. Experimental results showed that the proposed method was superior to other methods and compared the autofocus put forth in this paper and the normalized gray-level variance sharpness results in the documents to verify accuracy.
机译:本研究提出了稀疏和低级矩阵分解的概念,以解决飞行员的夜视护目镜(NVG)自动检查过程的需求,当检查设备可用性时。首先,自动化要求包括使用摄像机的NVGS和图像捕获的机械和电动机驱动的焦点旋钮,以实现自动对焦。传统上,被动自动对焦涉及首次计算每个帧的清晰度,然后使用搜索算法来快速找到最尖锐的焦点。在这项研究中,采用了稀疏和低秩矩阵分解的概念来实现自动对焦计算和图像融合。图像融合可以解决由机制错误引起的多焦点问题。实验结果表明,最尖锐的图像帧及其附近的帧可以是图像融合以解决可能由图像捕获机制引起的轻微误差。在本研究中,采用七个样本和12个图像定影指示器来验证基于在离散余弦变换域中计算的方差而无需一致性验证,具有一致性验证,结构感知图像融合和所提出的图像融合方法的图像融合。实验结果表明,该方法优于其他方法,并比较了本文提出的自动对焦,归一化的灰度方差锐度导致文档验证精度。

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