A linear piecewise suboptimum detector for signals in class-A noise

Khodr A. Saaifan, W. Henkel
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Abstract

In this paper, we consider the detection problem of binary signals corrupted by Class-A interference for two observations per symbol. The Class-A density contains infinitely many terms of scaled Gaussian-mixture densities, which yields an optimum detector that requires a high computational complexity. The linear (Gaussian) detector can be used, but it suffers from a significant performance degradation in stong impulse environments. The main objective of this paper is to design a simple detector with optimum performance. We start from the optimum decision boundaries, where we propose a piecewise linear approximation for nonlinear regions. As a result, we introduce a novel piecewise detector, which has much less complexity compared with the optimum one. Simulation results show a near-optimal performance for the proposed detectors in different impulse channel environments. Moreover, we show that one and two piecewise linear approximation per each nonlinear region is sufficient to approach the optimum performance.
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A类噪声信号的线性分段次优检测器
本文研究了在每个符号有两个观测值的情况下受a类干扰的二进制信号的检测问题。a类密度包含无限多的缩放高斯混合密度项,这产生了一个需要高计算复杂度的最佳检测器。可以使用线性(高斯)检测器,但它在强脉冲环境中性能下降明显。本文的主要目的是设计一种性能最优的简单检测器。我们从最优决策边界出发,提出了非线性区域的分段线性逼近。因此,我们引入了一种新的分段检测器,与最优检测器相比,它的复杂度大大降低。仿真结果表明,所提出的探测器在不同的脉冲信道环境下具有接近最优的性能。此外,我们还证明了每个非线性区域的一次和两次分段线性逼近足以接近最佳性能。
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