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Quantization of Gaussian Samples at Very Low SNR Regime in Continuous Variable QKD Applications

机译:在连续变量QKD应用中非常低SNR制度的高斯样本量化

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The main problem for information reconciliation in continuous variable Quantum Key Distribution (QKD) at low Signal to Noise Ratio (SNR) is quantization and assignment of labels to the samples of the Gaussian Random Variables (RVs) observed at Alice and Bob. Trouble is that most of the samples, assuming that the Gaussian variable is zero mean which is de-facto the case, tend to have small magnitudes and are easily disturbed by noise. Transmission over longer and longer distances increases the losses corresponding to a lower effective SNR exasperating the problem. This paper looks at the quantization problem of the Gaussian samples at very low SNR regime from an information theoretic point of view. We look at the problem of two bit per sample quantization of the Gaussian RVs at Alice and Bob and derive expressions for the mutual information between the bit strings as a result of this quantization. The quantization threshold for the Most Significant Bit (MSB) should be chosen based on the maximization of the mutual information between the quantized bit strings. Furthermore, while the LSB string at Alice and Bob are balanced in a sense that their entropy is close to maximum, this is not the case for the second most significant bit even under optimal threshold. We show that with two bit quantization at SNR of -3 dB we achieve 75.8% of maximal achievable mutual information between Alice and Bob, hence, as the number of quantization bits increases beyond 2-bits, the number of additional useful bits that can be extracted for secret key generation decreases rapidly. Furthermore, the error rates between the bit strings at Alice and Bob at the same significant bit level are rather high demanding very powerful error correcting codes. While our calculations and simulation shows that the mutual information between the LSB at Alice and Bob is 0.1044 bits, that at the MSB level is only 0.035 bits. Hence, it is only by looking at the bits jointly that we are able to achieve a mutual information of 0.2217 bits which is 75.8% of maximum achievable. The implication is that only by coding both MSB and LSB jointly can we hope to get close to this 75.8% limit. Hence, non-binary codes are essential to achieve acceptable performance.
机译:在低信噪比(SNR)的连续变量量子密钥分布(QKD)中的信息协调的主要问题是对Alice和Bob观察到的高斯随机变量(RVS)的样本的量化和分配标签。麻烦的是,大多数样本假设高斯变量为零意味着这种情况,往往具有小的大小并且容易受到噪音的干扰。在更长较长且较长的距离上传输增加了对应于较低的有效SNR的损失令人恼火的问题。本文从信息理论的角度来看高斯样本在非常低的SNR制度下的量化问题。我们在Alice和Bob处看到高斯RVS的每个样本量化的两个问题,并且由于该量化而导出位串之间的互信息的表达式。应基于量化位字符串之间的相互信息的最大化来选择最高有效位(MSB)的量化阈值。此外,虽然Alice和Bob的LSB串在某种意义上是平衡的,但是,它们的熵接近最大值,即使在最佳阈值下也不是第二个最有效位的情况。我们表明,在-3 dB的SNR中,我们在Alice和Bob之间实现了75.8%的最大可实现的互信息的75.8%,因此随着量化位的数量增加超过2位,可以是额外的有用位的数量提取用于秘密密钥生成迅速降低。此外,在相同的有效位电平的Alice和Bob处的比特串之间的误差率是相当高的要求非常强大的纠错码。虽然我们的计算和仿真表明,Alice和Bob之间的LSB之间的互信息是0.1044位,但在MSB级别仅为0.035位。因此,只有通过共同看待比特,我们能够实现0.2217位的相互信息,占最大可实现的75.8%。这一含义仅通过编码MSB和LSB,我们希望能够接近75.8%的限制。因此,非二进制代码对于实现可接受的性能至关重要。

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