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首页> 外文期刊>Pattern Analysis and Machine Intelligence, IEEE Transactions on >A Framework for Analysis of Computational Imaging Systems: Role of Signal Prior, Sensor Noise and Multiplexing
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A Framework for Analysis of Computational Imaging Systems: Role of Signal Prior, Sensor Noise and Multiplexing

机译:计算成像系统分析框架:信号先验,传感器噪声和多路复用的作用

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摘要

Over the last decade, a number of computational imaging (CI) systems have been proposed for tasks such as motion deblurring, defocus deblurring and multispectral imaging. These techniques increase the amount of light reaching the sensor via multiplexing and then undo the deleterious effects of multiplexing by appropriate reconstruction algorithms. Given the widespread appeal and the considerable enthusiasm generated by these techniques, a detailed performance analysis of the benefits conferred by this approach is important. Unfortunately, a detailed analysis of CI has proven to be a challenging problem because performance depends equally on three components: (1) the optical multiplexing, (2) the noise characteristics of the sensor, and (3) the reconstruction algorithm which typically uses signal priors. A few recent papers have performed analysis taking multiplexing and noise characteristics into account. However, analysis of CI systems under state-of-the-art reconstruction algorithms, most of which exploit signal prior models, has proven to be unwieldy. In this paper, we present a comprehensive analysis framework incorporating all three components. In order to perform this analysis, we model the signal priors using a Gaussian Mixture Model (GMM). A GMM prior confers two unique characteristics. First, GMM satisfies the universal approximation property which says that any prior density function can be approximated to any fidelity using a GMM with appropriate number of mixtures. Second, a GMM prior lends itself to analytical tractability allowing us to derive simple expressions for the ‘minimum mean square error’ (MMSE) which we use as a metric to characterize the performance of CI systems. We use our framework to analyze several previously proposed CI techniques (focal sweep, flutter shutter, parabolic exposure, etc.), giving conclusive answer to the que- tion: ‘How much performance gain is due to use of a signal prior and how much is due to multiplexing? Our analysis also clearly shows that multiplexing provides significant performance gains above and beyond the gains obtained due to use of signal priors.
机译:在过去的十年中,已经提出了许多用于运动去模糊,散焦去模糊和多光谱成像等任务的计算成像(CI)系统。这些技术增加了通过多路复用到达传感器的光量,然后通过适当的重建算法消除了多路复用的有害影响。鉴于这些技术的广泛吸引力和极大的热情,对这种方法所带来的好处进行详细的性能分析非常重要。不幸的是,对CI的详细分析已被证明是一个具有挑战性的问题,因为性能同样取决于三个组件:(1)光复用,(2)传感器的噪声特性,以及(3)通常使用信号的重建算法先验。最近的几篇论文 进行了分析,考虑了多路复用和噪声特性。但是,事实证明,在最先进的重建算法下对CI系统进行分析是不方便的,这些算法大多采用信号先验模型。在本文中,我们提出了一个包含所有三个组成部分的综合分析框架。为了执行此分析,我们使用高斯混合模型(GMM)对先验信号建模。 GMM先验具有两个独特的特征。首先,GMM满足通用逼近特性,即使用适当数量的混合物的GMM,可以将任何先前的密度函数逼近为任何保真度。其次,GMM先验性使其易于分析,使我们能够得出“最小均方误差”(MMSE)的简单表达式,我们将其用作表征CI系统性能的度量。我们使用我们的框架来分析先前提出的几种CI技术(焦距扫描,颤动快门,抛物线曝光等),从而对以下问题给出结论性答案:“在使用信号之前获得了多少性能提升,以及在使用之前获得了多少性能提升?是由于多路复用?我们的分析还清楚地表明,多路复用提供了显着的性能增益,超出了由于使用信号先验而获得的增益。

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