Learning a Probabilistic Strategy for Computational Imaging Sensor Selection

He Sun, Adrian V. Dalca, K. Bouman
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引用次数: 12

Abstract

Optimized sensing is important for computational imaging in low-resource environments, when images must be recovered from severely limited measurements. In this paper, we propose a physics-constrained, fully differentiable, autoencoder that learns a probabilistic sensor-sampling strategy for optimized sensor design. The proposed method learns a system's preferred sampling distribution that characterizes the correlations between different sensor selections as a binary, fully-connected Ising model. The learned probabilistic model is achieved by using a Gibbs sampling inspired network architecture, and is trained end-to-end with a reconstruction network for efficient co-design. The proposed framework is applicable to sensor selection problems in a variety of computational imaging applications. In this paper, we demonstrate the approach in the context of a very-long-baseline-interferometry (VLBI) array design task, where sensor correlations and atmospheric noise present unique challenges. We demonstrate results broadly consistent with expectation, and draw attention to particular structures preferred in the telescope array geometry that can be leveraged to plan future observations and design array expansions.
学习计算成像传感器选择的概率策略
在资源匮乏的环境中,当图像必须从严重受限的测量中恢复时,优化传感对于计算成像非常重要。在本文中,我们提出了一种物理约束的、完全可微的自编码器,它学习了一种用于优化传感器设计的概率传感器采样策略。所提出的方法学习系统的首选采样分布,该分布将不同传感器选择之间的相关性表征为二元,全连接的Ising模型。学习到的概率模型采用Gibbs抽样启发的网络架构实现,并与重构网络进行端到端训练,以实现高效的协同设计。提出的框架适用于各种计算成像应用中的传感器选择问题。在本文中,我们在超长基线干涉测量(VLBI)阵列设计任务的背景下演示了该方法,其中传感器相关性和大气噪声提出了独特的挑战。我们展示了与预期大致一致的结果,并提请注意望远镜阵列几何中首选的特定结构,这些结构可以用于规划未来的观测和设计阵列扩展。
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