44 lines
2.3 KiB
XML
44 lines
2.3 KiB
XML
= Introduction
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These are the introducing words
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== Notation
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To ensure a consistent notation of functions and ideas, we will now introduce some required conventions
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Random distributed variables will be notated with a capital letter, i.e. $X$, its realization will be the corresponding lower case letter, $x$.
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Vectors will be written in bold text: $bold(k)$ represents a vector of quantized symbols.
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Matrices are denoted with a bold capital letter: $bold(M)$
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We will call a quantized symbol $k$. $k$ consists of all possible binary symbols, i.e. $0, 01, 110$.
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A quantizer will be defined as a function $cal(Q)(x, bold(a))$ that returns a quantized symbol $k$.
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We also define the following special quantizers for metric based HDAs:
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A quantizer used during the enrollment phase is defined by a calligraphic $cal(E)$.
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For the reconstruction phase, a quantizer will be defined by a calligraphic $cal(R)$
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@example-quantizer shows the curve of a 2-bit quantizer that receives $tilde(x)$ as input. In the case, that the value of $tilde(x)$ equals one of the four bounds, the quantized value is chosen randomly from the relevant bins.
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#figure(
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include("../graphics/quantizers/two-bit-enroll.typ"),
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caption: [Example quantizer function]) <example-quantizer>
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For the S-Metric Helper Data Method, we introduce a function
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$ cal(Q)(S,M) , $<eq-1>
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where $S$ determines the number of metrics and $M$ the bit width of the symbols.
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The corresponding metric is defined through the lower case $s$, the bit symbol through the lower case $m$.
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=== Tilde-Domain<tilde-domain>
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AS also described in @smhd, we will use a CDF to transform the real PUF values into the Tilde-Domain
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This transformation can be performed using the function $xi = tilde(x)$. The key property of this transformation is the resulting uniform distribution of $x$.
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Considering a normal distribution, the CDF is defined as
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$ xi(frac(x - mu, sigma)) = frac(1, 2)[1 + \e\rf(frac(x - mu, sigma sqrt(2)))] $
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==== ECDF
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The eCDF is constructed through sorting the empirical measurements of a distribution @dekking2005modern. Although less accurate, this method allows a more simple and less computationally complex way to transform real valued measurements into the Tilde-Domain. We will mainly use the eCDF in @chap:smhd because of the difficulty of finding an analytical description for the CDF of a Gaussian-Mixture.
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