Color calibration of multi-projector displays through automatic optimization of hardware settings

R. M. Steele, Mao Ye, Ruigang Yang
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引用次数: 5

Abstract

We describe a system that performs automatic, camera-based photometric projector calibration by adjusting hardware settings (e.g. brightness, contrast, etc.). The approach has two basic advantages over software-correction methods. First, there is no software interface imposed on graphical programs: all imagery displayed on the projector benefits from the calibration immediately, without render-time overhead or code changes. Secondly, the approach benefits from the fact that projector hardware settings typically are capable of expanding or shifting color gamuts (e.g. trading off maximum brightness versus darkness of black levels), something that software methods, which only shrink gamuts, cannot do. In practice this means that hardware settings can possibly match colors between projectors while maintaining a larger overall color gamut (e.g. better contrast) than software-only correction can. The prototype system is fully automatic. The space of hardware settings is explored by using a computer-controlled universal remote to navigate each projector's menu system. An off-the-shelf camera observes each projector's response curves. A cost function is computed for the curves based on their similarity to each other, as well as intrinsic characteristics, including color balance, black level, gamma, and dynamic range. An approximate optimum is found using a heuristic combinatoric search. Results show significant qualitative improvements in the absolute colors, as well as the color consistency, of the display.
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通过自动优化硬件设置来校准多投影机显示器的颜色
我们描述了一个通过调整硬件设置(例如亮度,对比度等)来执行自动,基于相机的光度投影仪校准的系统。与软件校正方法相比,该方法有两个基本优点。首先,没有强加在图形程序上的软件界面:投影仪上显示的所有图像都可以立即从校准中受益,而无需渲染时间开销或代码更改。其次,这种方法得益于投影机硬件设置通常能够扩展或移动色域(例如,在最大亮度与黑色水平的黑暗之间进行交易),这是只能缩小色域的软件方法无法做到的。在实践中,这意味着硬件设置可以在投影机之间匹配颜色,同时保持更大的整体色域(例如,更好的对比度),而不是仅使用软件进行校正。原型系统是全自动的。通过使用计算机控制的通用遥控器来导航每个投影仪的菜单系统,探索硬件设置的空间。一台现成的摄像机观察每个投影仪的响应曲线。根据曲线之间的相似性以及内在特征(包括色彩平衡、黑电平、伽马和动态范围)计算曲线的成本函数。用启发式组合搜索法求出近似最优解。结果显示,在绝对颜色和颜色一致性方面,显示器的质量有了显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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