The interference of fluorescence signals and noise remains a significant challenge in Raman spectrum analysis, often obscuring subtle spectral features that are critical for accurate analysis. Inspired by variational methods similar to those used in image denoising, our approach minimizes a functional involving fractional derivatives to balance noise suppression with the preservation of essential chemical features of the signal, such as peak position, intensity, and area. The original problem is reformulated in the frequency domain through the Fourier transform, making the implementation simple and fast. In this work, we discuss the theoretical framework, practical implementation, and the advantages and limitations of this method in the context of {simulated} Raman data, as well as in image processing. The main contribution of this article is the combination of a variational approach in the frequency domain, the use of fractional derivatives, and the optimization of the {regularization parameter and} derivative order through the concept of Shannon entropy. This work explores how the fractional order, combined with the regularization parameter, affects noise removal and preserves the essential features of the spectrum {and image}. Finally, the study shows that the combination of the proposed strategies produces an efficient, robust, and easily implementable filter.
翻译:荧光信号与噪声的干扰仍然是拉曼光谱分析中的一个重大挑战,常常掩盖对精确分析至关重要的细微光谱特征。受图像去噪中使用的变分方法启发,我们的方法通过最小化包含分数阶导数的泛函,在噪声抑制与信号关键化学特征(如峰位、强度和面积)的保留之间取得平衡。原始问题通过傅里叶变换在频域中重新表述,使得实现简单快速。本文讨论了该方法在模拟拉曼数据及图像处理中的理论框架、实际应用以及优势与局限性。文章的主要贡献在于结合了频域变分方法、分数阶导数的使用,以及通过香农熵概念优化正则化参数和导数阶数。本研究探讨了分数阶阶数与正则化参数如何共同影响噪声去除并保留光谱及图像的本质特征。最后,研究表明所提策略的结合产生了一种高效、鲁棒且易于实现的滤波器。