CCD成像过程的统计校准

Yanghai Tsin, Visvanathan Ramesh, T. Kanade
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引用次数: 264

摘要

电荷耦合器件(CCD)相机是计算机视觉系统中应用广泛的成像传感器。许多光度算法,如阴影形状、色彩恒常性和光度立体,都隐含地假设图像强度与场景亮度成正比。实际的图像测量结果明显偏离了这个假设,因为从场景亮度到图像强度的转换是非线性的,并且是各种因素的函数,这些因素包括:CCD传感器中的噪声源,以及相机中发生的各种转换,包括:白平衡、伽马校正和自动增益控制。本文说明了对误差源的仔细建模和各种处理步骤如何使我们能够准确地估计“响应函数”,即给定相机曝光设置下从图像测量到场景亮度的逆映射。结果表明,该估计算法在减少偏差和方差方面优于已知的校准程序。此外,我们演示了误差建模如何帮助我们获得相机辐照度值的不确定性估计。这种不确定性建模的力量是通过涉及高动态范围图像生成随后的变化检测的视觉任务来说明的。即使两张图像(参考场景图像和当前图像)相隔几个小时拍摄,也可以可靠地检测到变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Statistical calibration of CCD imaging process
Charge-Coupled Device (CCD) cameras are widely used imaging sensors in computer vision systems. Many photometric algorithms, such as shape from shading, color constancy and photometric stereo, implicitly assume that the image intensity is proportional to scene radiance. The actual image measurements deviate significantly from this assumption since the transformation from scene radiance to image intensity is non-linear and is a function of various factors including: noise sources in the CCD sensor, as well as various transformations occurring in the camera including: white balancing, gamma correction and automatic gain control. This paper illustrates how careful modeling of the error sources and the various processing steps enable us to accurately estimate the "response function", the inverse mapping from image measurements to scene radiance for a given camera exposure setting. It is shown that the estimation algorithm outperforms the calibration procedures known to us in terms of reduced bias and variance. Further, we demonstrate how the error modelling helps us to obtain uncertainty estimates of the camera irradiance value. The power of this uncertainty modeling is illustrated by a vision task involving High Dynamic Range image generation followed by change detection. Change can be detected reliably even in situation where the two images (the reference scene image and the current image) are taken several hours apart.
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