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Feature-specific structured imaging

机译:特征特定的结构化成像

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摘要

We present a feature-specific imaging system based on the use of structured light. Feature measurements are obtained by projecting spatially structured illumination onto an object and collecting all the reflected light onto a single photodetector. Principal component features are used to define the illumination patterns. The optimal linear minimum mean-square error (LMMSE) operator is used to generate object estimates from the measured features. We study the optimal allocation of illumination energy into each feature measurement in the presence of additive white Gaussian detector noise and optical blur. We demonstrate that this new imaging approach reduces imager complexity and provides improved image quality in high noise environments. Compared to the optimal LMMSE postprocessing of a conventional image, feature-specific structured imaging provides a 38percent rms error reduction and requires 400 times fewer measurements for a noise standard deviation of sigma velence 2 X 10~(-3). Experimental results validate these theoretical predictions.
机译:我们提出一种基于结构化光的特定功能成像系统。通过将空间结构化照明投射到物体上并将所有反射光收集到单个光电探测器上,即可获得特征量度。主成分特征用于定义照明模式。最佳线性最小均方误差(LMMSE)运算符用于根据测量的特征生成对象估计。我们在存在加性白高斯检测器噪声和光学模糊的情况下研究照明能量在每个特征测量中的最佳分配。我们证明了这种新的成像方法降低了成像器的复杂性,并在高噪声环境中提供了改进的图像质量。与常规图像的最佳LMMSE后处理相比,针对特定特征的结构化成像可减少38%rms的均方根误差,并且对于sigma velence 2 X 10〜(-3)的噪声标准偏差,所需的测量量要少400倍。实验结果验证了这些理论预测。

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