Convolutional Entanglement Distillation
Abstract
We develop a theory of entanglement distillation that exploits a convolutional coding structure. We provide a method for converting an arbitrary classical binary or quaternary convolutional code into a convolutional entanglement distillation protocol. The imported classical convolutional code does not have to be dual-containing or self-orthogonal. The yield and error-correcting properties of such a protocol depend respectively on the rate and error-correcting properties of the imported classical convolutional code. A convolutional entanglement distillation protocol has several other benefits. Two parties sharing noisy ebits can distill noiseless ebits ``online'' as they acquire more noisy ebits. Distillation yield is high and decoding complexity is simple for a convolutional entanglement distillation protocol. Our theory of convolutional entanglement distillation reduces the problem of finding a good convolutional entanglement distillation protocol to the well-established problem of finding a good classical convolutional code.
Cite
@article{arxiv.0708.3699,
title = {Convolutional Entanglement Distillation},
author = {Mark M. Wilde and Hari Krovi and Todd A. Brun},
journal= {arXiv preprint arXiv:0708.3699},
year = {2010}
}
Comments
17 pages, 7 figures, 1 table - minor corrections to text and figures