Physics-Based Constraints in the Forward Modeling Analysis of Time-Correlated Image Data

ICMLA), 2012 11th International Conference(2012)

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摘要
The forward-model approach has been shown to produce accurate model reconstructions of scientific measurements for single-time image data. Here we extend the approach to a series of images that are correlated in time using the physics-based constraints that are often available with scientific imaging. The constraints are implemented through a representational bias in the model and, owing to the smooth nature of the physics evolution in the specified model, provide an effective temporal regularization. Unlike more general temporal regularization techniques, this restricts the space of solutions to those that are physically realizable. We explore the performance of this approach on a simple radiographic imaging problem of a simulated object evolving in time. We demonstrate that the constrained simultaneous analysis of the image sequence outperforms the independent forward modeling analysis over a range of degrees of freedom in the physics constraints, including when the physics model is under-constrained. Further, this approach outperforms the independent analysis over a large range of signal-to-noise ratios.
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关键词
correlation theory,data analysis,image reconstruction,image sequences,motion estimation,optimisation,radiography,scientific information systems,time series,correlated image data analysis,degree of freedom,forward modeling analysis,image sequence,image series,physics-based constraint,radiographic imaging problem,representational bias,scientific imaging,scientific measurement model reconstruction,signal to noise ratio,temporal regularization,time series,Analysis by Synthesis,Forward Modeling,Radiography,Scientific Imaging,Time Series Analysis
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