自校准成像偏振法

Y. Schechner
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引用次数: 19

摘要

为了映射场景中物体的偏振状态(斯托克斯矢量),通常使用偏振滤波器(分析仪)获取图像,设置在不同的方向。通常假设这些方向都是已知的。然而,通常角度是未知的:大多数摄影师手动旋转滤镜在粗糙的未记录的角度。机动级或遥感设备的偏差是由设备漂移和环境变化引起的。这项工作保持了不受控制的未校准摄影的简单性,并且仍然从照片中提取准确的偏振。这是在未知的分析仪角度和物体的斯托克斯矢量下实现的。本文推导了数据大小的适度条件,以使该任务具有良好的定位,甚至是过度约束。提出了一种估计算法,并在实际实验中进行了验证。该算法具有精度高、速度快、简单、对强噪声和其他信号干扰具有鲁棒性等特点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Self-Calibrating Imaging Polarimetry
To map the polarization state (Stokes vector) of objects in a scene, images are typically acquired using a polarization filter (analyzer), set at different orientations. Usually these orientations are assumed to be all known. Often, however, the angles are unknown: most photographers manually rotate the filter in coarse undocumented angles. Deviations in motorized stages or remote-sensing equipment are caused by device drift and environmental changes. This work keeps the simplicity of uncontrolled uncalibrated photography, and still extracts from the photographs accurate polarimetry. This is achieved despite unknown analyzer angles and the objects' Stokes vectors. The paper derives modest conditions on the data size, to make this task well-posed and even over-constrained. The paper then proposes an estimation algorithm, and tests it in real experiments. The algorithm demonstrates high accuracy, speed, simplicity and robustness to strong noise and other signal disruptions.
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