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Point light source estimation from two images and its limits

机译:从两个图像估计点光源及其极限

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In this paper, the performance of parameter estimation of a single static distant point light source from two video images is analyzed in terms of estimation theory. The illumination parameters are the intensity and direction of the light source. In the first part of this paper, estimators from the literature are reviewed. Most recent estimators evaluate as input data two video images as well as the 3D shape and the 3D motion of the visible moving objects. In the second part of the paper, the performance of these recent methods is analyzed. The input data to estimation as well as the inherent input data errors are described by a stochastic observation model. Based on this model, the performance is analyzed regarding the Cramer-Rao theoretical lower bound of estimation error variances. The bound is derived for a variety of cases of scene illumination, object motion and errors in input data. For simplification purpose, the bound is valid only for object motions with the rotation axis lying in the image plane. The analysis shows in which cases which estimation accuracy can be expected with current methods. Finally, a comparison of the bound with one of the recent estimators shows that recent estimators are suboptimal in case of errors in the 3D shape of the objects. In future work, the stochastic observation model presented in this paper can be used to improve illumination estimation. [References: 90]
机译:本文从估计理论出发,分析了两个视频图像中单个静态远点光源的参数估计性能。照明参数是光源的强度和方向。在本文的第一部分,对来自文献的估计量进行了综述。最新的估算器将两个视频图像以及可见运动对象的3D形状和3D运动作为输入数据进行评估。在本文的第二部分中,分析了这些最新方法的性能。估计的输入数据以及固有的输入数据错误由随机观测模型描述。基于此模型,针对估计误差方差的Cramer-Rao理论下限分析了性能。该边界是针对各种场景照明,对象运动和输入数据错误的情况得出的。为简化起见,边界仅对旋转轴位于图像平面中的对象运动有效。分析表明,在哪些情况下使用当前方法可以预期哪种估计精度。最后,将边界与最近估计量之一进行比较表明,在对象的3D形状有错误的情况下,最近估计量次优。在未来的工作中,本文提出的随机观测模型可用于改善照明估计。 [参考:90]

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