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Improvement of background signal reduction using modified trimmed mean based outer product expansion

机译:使用基于修正的均值的外部乘积展开来改善背景信号减少

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This paper shows a new denoising algorithm based on the outer product expansion with Modified Trimmed Mean(MTM) for a background noise. We have proposed novel source separation methods using the outer product expansion with non-linear filters. The effectiveness of outer product expansions for artificial signals and an electromagnetic wave data have reported. As for an outer product expansion based denoising algorithm, the MTM method with a small trimming distance provides the accurate background noise reduction. However, the denoising performance is not improved enough due to the trimming threshold problem. In this paper, the new background noise estimation technique which calculates the MTM recurrently and its solution algorithm is proposed. Simulation results show that the proposed method produces the accurate background noise reduction.
机译:本文展示了一种基于外部乘积展开的改进去噪均值(MTM)降噪算法,用于处理背景噪声。我们提出了使用非线性滤波器的外部乘积展开的新型源分离方法。已经报道了外部产品扩展对于人工信号和电磁波数据的有效性。对于基于外部产品扩展的降噪算法,微调距离小的MTM方法可提供准确的背景降噪效果。然而,由于修整阈值问题,降噪性能没有得到足够的改善。本文提出了一种可循环计算MTM的新的背景噪声估计技术及其求解算法。仿真结果表明,所提方法能够有效地降低背景噪声。

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