CVMar 14, 2017

A Framework for Dynamic Image Sampling Based on Supervised Learning (SLADS)

arXiv:1703.04653v133 citations
Originality Highly original
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This addresses the need for faster, high-fidelity image sampling in applications like medical imaging to reduce acquisition time and radiation damage, representing a novel method for a known bottleneck.

The paper tackles the problem of slow and computationally expensive dynamic sampling for image acquisition by introducing SLADS, a supervised learning framework that selects measurement locations to maximize expected reduction in distortion, resulting in dramatic improvements over state-of-the-art static sampling methods as demonstrated on synthetic and experimental data.

Sparse sampling schemes have the potential to dramatically reduce image acquisition time while simultaneously reducing radiation damage to samples. However, for a sparse sampling scheme to be useful it is important that we are able to reconstruct the underlying object with sufficient clarity using the sparse measurements. In dynamic sampling, each new measurement location is selected based on information obtained from previous measurements. Therefore, dynamic sampling schemes have the potential to dramatically reduce the number of measurements needed for high fidelity reconstructions. However, most existing dynamic sampling methods for point-wise measurement acquisition tend to be computationally expensive and are therefore too slow for practical applications. In this paper, we present a framework for dynamic sampling based on machine learning techniques, which we call a supervised learning approach for dynamic sampling (SLADS). In each step of SLADS, the objective is to find the pixel that maximizes the expected reduction in distortion (ERD) given previous measurements. SLADS is fast because we use a simple regression function to compute the ERD, and it is accurate because the regression function is trained using data sets that are representative of the specific application. In addition, we introduce a method to terminate dynamic sampling at a desired level of distortion, and we extended the SLADS methodology to sample groups of pixels at each step. Finally, we present results on computationally-generated synthetic data and experimentally-collected data to demonstrate a dramatic improvement over state-of-the-art static sampling methods.

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