Locally Invertible Multidimensional Convolutional Encoders

IEEE Transactions on Information Theory(2012)

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摘要
A polynomial matrix is said to be locally invertible if it has an invertible subsequence map of equal size between its input and output sequence spaces. This paper examines the use of these matrices, which we call locally invertible encoders, for generating multidimensional convolutional codes. We discuss a novel method of encoding and inverting multidimensional sequences using the subsequence map. We also show that the overlapping symbols between consecutive input subsequences obtained during the sequence inversion can be used to determine if the received sequence is the same as the transmitted codeword.
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novel method,output sequence space,sequence inversion,equal size,consecutive input,invertible subsequence map,subsequence map,multidimensional convolutional code,invertible encoders,invertible multidimensional convolutional encoders,inverting multidimensional,multidimensional system,polynomial matrix,polynomials,convolutional codes,encoding,lattices,sequence space,generators,multidimensional systems,convolutional code,multidimensional signal processing,error correction code,vectors
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