Algebraic signal processing theory: sampling for infinite and finite 1-D space

IEEE Transactions on Signal Processing(2010)

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摘要
We derive a signal processing framework, called space signal processing, that parallels time signal processing. As such, it comes in four versions (continuous/discrete, infinite/finite),each with its own notion of convolution and Fourier transform. As in time, these versions are connected by sampling theorems that we derive. In contrast to time, however, space signal processing is based on a different notion of shift, called space shift, which operates symmetrically. Our work rigorously connects known and novel concepts into a coherent framework; most importantly, it shows that the sixteen discrete cosine and sine transforms are the space equivalent of the discrete Fourier transform, and hence can be derived by sampling. The platform for our work is the algebraic signal processing theory, an axiomatic approach and generalization of linear signal processing that we recently introduced.
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关键词
space shift,discrete fourier,algebraic signal processing theory,sixteen discrete cosine,coherent framework,space signal processing,space equivalent,1-d space,signal processing framework,parallels time signal processing,linear signal processing,fourier transforms,algebra,visualization,convolution,signal processing,fourier transform,cosine transform,sampling theorem,module,discrete fourier transform
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