Twisted μ4-normal form for elliptic curves

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Abstract

We introduce the twisted μ4-normal form for elliptic curves, deriving in particular addition algorithms with complexity 9M + 2S and doubling algorithms with complexity 2M + 5S + 2m over a binary field. Every ordinary elliptic curve over a finite field of characteristic 2 is isomorphic to one in this family. This improvement to the addition algorithm, applicable to a larger class of curves, is comparable to the 7M+ 2S achieved for the μ4-normal form, and replaces the previously best known complexity of 13M + 3S on López-Dahab models applicable to these twisted curves. The derived doubling algorithm is essentially optimal, without any assumption of special cases.We show moreover that the Montgomery scalar multiplication with point recovery carries over to the twisted models, giving symmetric scalar multiplication adapted to protect against side channel attacks, with a cost of 4M+4S+1mt+2mc per bit. In characteristic different from 2, we establish a linear isomorphism with the twisted Edwards model over the base field. This work, in complement to the introduction of μ4-normal form, fills the lacuna in the body of work on efficient arithmetic on elliptic curves over binary fields, explained by this common framework for elliptic curves in μ4-normal form over a field of any characteristic. The improvements are analogous to those which the Edwards and twisted Edwards models achieved for elliptic curves over finite fields of odd characteristic and extend μ4-normal form to cover the binary NIST curves.

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Kohel, D. (2017). Twisted μ4-normal form for elliptic curves. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 10210 LNCS, pp. 659–678). Springer Verlag. https://doi.org/10.1007/978-3-319-56620-7_23

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