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Low-Complexity Grassmannian Quantization Based on Binary Chirps

Publication ,  Conference
Pllaha, T; Heikkila, E; Calderbank, R; Tirkkonen, O
Published in: IEEE Wireless Communications and Networking Conference Wcnc
January 1, 2022

We consider autocorrelation-based low-complexity decoders for identifying Binary Chirp codewords from noisy signals in N = 2m dimensions. The underlying algebraic structure enables dimensionality reduction from N complex to m binary di- mensions, which can be used to reduce decoding complexity, when decoding is successively performed in the m binary dimensions. Existing low-complexity decoders suffer from poor performance in scenarios with strong noise. This is problematic especially in a vector quantization scenario, where quantization noise power cannot be controlled in the system. We construct two improvements to existing algorithms; a geometrically inspired algorithm based on successive projections, and an algorithm based on adaptive decoding order selection. When combined with a breadth-first list decoder, these algorithms make it possible to approach the performance of exhaustive search with low complexity.

Duke Scholars

Published In

IEEE Wireless Communications and Networking Conference Wcnc

DOI

ISSN

1525-3511

Publication Date

January 1, 2022

Volume

2022-April

Start / End Page

1105 / 1110
 

Citation

APA
Chicago
ICMJE
MLA
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Pllaha, T., Heikkila, E., Calderbank, R., & Tirkkonen, O. (2022). Low-Complexity Grassmannian Quantization Based on Binary Chirps. In IEEE Wireless Communications and Networking Conference Wcnc (Vol. 2022-April, pp. 1105–1110). https://doi.org/10.1109/WCNC51071.2022.9771694
Pllaha, T., E. Heikkila, R. Calderbank, and O. Tirkkonen. “Low-Complexity Grassmannian Quantization Based on Binary Chirps.” In IEEE Wireless Communications and Networking Conference Wcnc, 2022-April:1105–10, 2022. https://doi.org/10.1109/WCNC51071.2022.9771694.
Pllaha T, Heikkila E, Calderbank R, Tirkkonen O. Low-Complexity Grassmannian Quantization Based on Binary Chirps. In: IEEE Wireless Communications and Networking Conference Wcnc. 2022. p. 1105–10.
Pllaha, T., et al. “Low-Complexity Grassmannian Quantization Based on Binary Chirps.” IEEE Wireless Communications and Networking Conference Wcnc, vol. 2022-April, 2022, pp. 1105–10. Scopus, doi:10.1109/WCNC51071.2022.9771694.
Pllaha T, Heikkila E, Calderbank R, Tirkkonen O. Low-Complexity Grassmannian Quantization Based on Binary Chirps. IEEE Wireless Communications and Networking Conference Wcnc. 2022. p. 1105–1110.

Published In

IEEE Wireless Communications and Networking Conference Wcnc

DOI

ISSN

1525-3511

Publication Date

January 1, 2022

Volume

2022-April

Start / End Page

1105 / 1110