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A reconstruction algorithm based on sparse representation for Raman signal processing under high background noise

机译:高背景噪声下基于稀疏表示的拉曼信号处理重建算法

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摘要

Background noise is one of the main interference sources of the Raman spectroscopy measurement and imaging technique. In this paper, a sparse representation based algorithm is presented to process the Raman signals under high background noise. In contrast with the existing de-noising methods, the proposed method reconstructs the pure Raman signals by estimating the Raman peak information. The advantage of the proposed algorithm is its high anti-noise capacity and low pure Raman signal reduction contributed by its reconstruction principle. Meanwhile, the Batch-OMP algorithm is applied to accelerate the training of the sparse representation. Therefore, it is very suitable to be adopted in the Raman measurement or imaging instruments to observe fast dynamic processes where the scanning time has to be shortened and the signal-to-noise ratio (SNR) of the raw tested signal is reduced. In the simulation and experiment, the de-noising result obtained by the proposed algorithm was better than the traditional Savitzky-Golay (S-G) filter and the fixed-threshold wavelet de-noising algorithm.
机译:背景噪声是拉曼光谱测量和成像技术的主要干扰源之一。本文提出了一种基于稀疏表示的算法来处理高背景噪声下的拉曼信号。与现有的去噪方法相反,该方法通过估计拉曼峰值信息来重建纯拉曼信号。该算法的优点是重构原理具有较高的抗噪能力和较低的纯拉曼信号降低能力。同时,采用Batch-OMP算法来加速稀疏表示的训练。因此,非常适合在拉曼测量或成像仪器中采用以观察快速动态过程,在该过程中必须缩短扫描时间并降低原始测试信号的信噪比(SNR)。在仿真和实验中,与传统的Savitzky-Golay(S-G)滤波器和固定阈值小波去噪算法相比,该算法获得的去噪效果更好。

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