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sparse regression and spatial image restoration when using secondary information

机译:使用辅助信息时的稀疏回归和空间图像恢复

摘要

A spatio-temporal image of an object is reconstructed based on captured data characterizing the object. The spatio-temporal image comprises a plurality of spatial images in respective time intervals, and at least a given one of the spatial images in one of the time intervals is reconstructed using not only captured data from a frame associated with that time interval but also captured data associated with one or more additional frames associated with other time intervals. The spatio-temporal image may be reconstructed by iteratively obtaining a solution to a minimization or maximization problem in a sparse domain and transforming the solution to an image domain. The transformation between the sparse domain and the image domain may utilize a spatio-temporal transformation implemented using a plurality of basis functions, one or more of which may be determined at least in part based on secondary information associated with the imaged object.
机译:基于表征对象的捕获数据来重建对象的时空图像。时空图像包括在各个时间间隔中的多个空间图像,并且不仅使用与该时间间隔相关联的帧中的捕获数据,还重建了其中一个时间间隔中的至少一个给定的空间图像。与与其他时间间隔关联的一个或多个其他帧关联的数据。可以通过迭代地获得稀疏域中的最小化或最大化问题的解并将该解变换为图像域来重建时空图像。稀疏域和图像域之间的变换可以利用使用多个基函数实现的时空变换,可以至少部分地基于与成像对象相关联的辅助信息来确定一个或多个基函数。

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