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Low-complexity Architecture for AR(1) Inference

21 August 2020
A. Borges
R. de Sobral Cintra
Diego F. G. Coelho
V. S. Dimitrov
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Abstract

In this Letter, we propose a low-complexity estimator for the correlation coefficient based on the signed AR⁡(1)\operatorname{AR}(1)AR(1) process. The introduced approximation is suitable for implementation in low-power hardware architectures. Monte Carlo simulations reveal that the proposed estimator performs comparably to the competing methods in literature with maximum error in order of 10−210^{-2}10−2. However, the hardware implementation of the introduced method presents considerable advantages in several relevant metrics, offering more than 95% reduction in dynamic power and doubling the maximum operating frequency when compared to the reference method.

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