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Decoding fingerprints using the Markov Chain Monte Carlo method

机译:使用马尔可夫链蒙特卡罗方法解码指纹

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This paper proposes a new fingerprinting decoder based on the Markov Chain Monte Carlo (MCMC) method. A Gibbs sampler generates groups of users according to the posterior probability that these users could have forged the sequence extracted from the pirated content. The marginal probability that a given user pertains to the collusion is then estimated by a Monte Carlo method. The users having the biggest empirical marginal probabilities are accused. This MCMC method can decode any type of fingerprinting codes. This paper is in the spirit of the ‘Learn and Match’ decoding strategy: it assumes that the collusion attack belongs to a family of models. The Expectation-Maximization algorithm estimates the parameters of the collusion model from the extracted sequence. This part of the algorithm is described for the binary Tardos code and with the exploitation of the soft outputs of the watermarking decoder. The experimental body considers some extreme setups where the fingerprinting code lengths are very small. It reveals that the weak link of our approach is the estimation part. This is a clear warning to the ‘Learn and Match’ decoding strategy.
机译:提出了一种基于马尔可夫链蒙特卡洛(MCMC)方法的指纹识别解码器。 Gibbs采样器根据这些用户可能伪造了从盗版内容中提取的序列的后验概率来生成用户组。然后,通过蒙特卡洛方法估计给定用户属于共谋的边际概率。被指控具有最大经验边际概率的用户。此MCMC方法可以解码任何类型的指纹代码。本文本着“学习并匹配”解码策略的精神:假设共谋攻击属于一系列模型。期望最大化算法从提取的序列中估计共谋模型的参数。针对二进制Tardos码以及利用水印解码器的软输出来描述算法的这一部分。实验机构考虑了一些极端的设置,其中的指纹代码长度非常小。它表明我们方法的薄弱环节是估计部分。这是对“学习并匹配”解码策略的明确警告。

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