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首页> 外文期刊>IEEE Transactions on Information Theory >Turbo Decoding as Iterative Constrained Maximum-Likelihood Sequence Detection
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Turbo Decoding as Iterative Constrained Maximum-Likelihood Sequence Detection

机译:Turbo解码作为迭代约束最大似然序列检测

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The turbo decoder was not originally introduced as a solution to an optimization problem, which has impeded attempts to explain its excellent performance. Here it is shown, that the turbo decoder is an iterative method seeking a solution to an intuitively pleasing constrained optimization problem. In particular, the turbo decoder seeks the maximum-likelihood sequence (MLS) under the false assumption that the input to the encoders are chosen independently of each other in the parallel case, or that the output of the outer encoder is chosen independently of the input to the inner encoder in the serial case. To control the error introduced by the false assumption, the optimizations are performed subject to a constraint on the probability that the independent messages happen to coincide. When the constraining probability equals one, the global maximum of the constrained optimization problem is the maximum-likelihood sequence detection (MLSD), allowing for a theoretical connection between turbo decoding and MLSD. It is then shown that the turbo decoder is a nonlinear block Gauss-Seidel iteration that aims to solve the optimization problem by zeroing the gradient of the Lagrangian with a Lagrange multiplier of -1. Some conditions for the convergence for the turbo decoder are then given by adapting the existing literature for Gauss-Seidel iterations
机译:Turbo解码器最初并不是作为优化问题的解决方案引入的,这阻碍了解释其出色性能的尝试。在此示出,turbo解码器是一种迭代方法,其寻求对直观上令人愉悦的约束优化问题的解决方案。特别是,turbo解码器在以下错误假设下寻求最大似然序列(MLS):在并行情况下,编码器的输入彼此独立地选择,或者外部编​​码器的输出与输入独立地选择在串行情况下连接到内部编码器。为了控制由错误假设引起的错误,在对独立消息碰巧重合的可能性进行约束的情况下执行优化。当约束概率等于1时,约束优化问题的全局最大值是最大似然序列检测(MLSD),从而可以在Turbo解码和MLSD之间建立理论联系。然后表明,turbo解码器是一个非线性块高斯-赛德尔迭代,旨在通过用拉格朗日乘数-1将拉格朗日的梯度归零来解决优化问题。然后,通过将现有文献改编为高斯-赛德尔迭代,给出turbo解码器收敛的一些条件。

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