Fingerprinting with Minimum Distance Decoding
Shih-Chun Lin, Mohammad Shahmohammadi, Hesham El Gamal

TL;DR
This paper develops a new fingerprinting scheme using minimum distance decoding, demonstrating significant performance improvements over existing methods through theoretical analysis and practical code constructions.
Contribution
It introduces a novel information theoretic framework for collusion-resistant fingerprinting, characterizes achievable rates under various attacks, and designs effective coding schemes based on belief propagation.
Findings
Achieves rate 1/2 for t=2 under averaging attack.
Achieves rate approximately 0.188 for t=2 under marking assumption.
Constructs practical codes with very low misidentification probability at rates 1/3 and 1/9.
Abstract
This work adopts an information theoretic framework for the design of collusion-resistant coding/decoding schemes for digital fingerprinting. More specifically, the minimum distance decision rule is used to identify 1 out of t pirates. Achievable rates, under this detection rule, are characterized in two distinct scenarios. First, we consider the averaging attack where a random coding argument is used to show that the rate 1/2 is achievable with t=2 pirates. Our study is then extended to the general case of arbitrary highlighting the underlying complexity-performance tradeoff. Overall, these results establish the significant performance gains offered by minimum distance decoding as compared to other approaches based on orthogonal codes and correlation detectors. In the second scenario, we characterize the achievable rates, with minimum distance decoding, under any collusion attack…
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