Teixeira Joana, Lopes Tomás, Capela Diana, Monteiro Catarina S, Guimarães Diana, Lima Alexandre, Jorge Pedro A S, Silva Nuno A
Centre for Applied Photonics, INESC TEC, Rua do Campo Alegre 687, 4169-007, Porto, Portugal.
Departamento de Física e Astronomia, Faculdade de Ciências da Universidade do Porto, Rua do Campo Alegre 687, 4169-007, Porto, Portugal.
Sci Rep. 2025 Jan 28;15(1):3515. doi: 10.1038/s41598-024-84058-z.
Spectral Imaging techniques such as Laser-induced Breakdown Spectroscopy (LIBS) and Raman Spectroscopy (RS) enable the localized acquisition of spectral data, providing insights into the presence, quantity, and spatial distribution of chemical elements or molecules within a sample. This significantly expands the accessible information compared to conventional imaging approaches such as machine vision. However, despite its potential, spectral imaging also faces specific challenges depending on the limitations of the spectroscopy technique used, such as signal saturation, matrix interferences, fluorescence, or background emission. To address these challenges, this work explores the potential of using techniques from conventional RGB imaging to enhance the dynamic range of spectral imaging. Drawing inspiration from multi-exposure fusion techniques, we propose an algorithm that calculates a global weight map using exposure and contrast metrics. This map is then used to merge datasets acquired with the same technique under distinct acquisition conditions. With case studies focused on LIBS and Raman Imaging, we demonstrate the potential of our approach to enhance the quality of spectral data, mitigating the impact of the aforementioned limitations. Results show a consistent improvement in overall contrast and peak signal-to-noise ratios of the merged images compared to single-condition images. Additionally, from the application perspective, we also discuss the impact of our approach on sample classification problems. The results indicate that LIBS-based classification of Li-bearing minerals (with Raman serving as the ground truth), is significantly improved when using merged images, reinforcing the advantages of the proposed solution for practical applications.
光谱成像技术,如激光诱导击穿光谱(LIBS)和拉曼光谱(RS),能够对光谱数据进行局部采集,从而深入了解样品中化学元素或分子的存在、数量及空间分布。与传统成像方法(如机器视觉)相比,这显著扩展了可获取的信息。然而,尽管光谱成像具有潜力,但根据所使用的光谱技术的局限性,它也面临着特定的挑战,如信号饱和、基体干扰、荧光或背景发射。为应对这些挑战,本研究探索了利用传统RGB成像技术来扩展光谱成像动态范围的潜力。借鉴多曝光融合技术,我们提出了一种算法,该算法使用曝光和对比度指标来计算全局权重图。然后,利用该权重图对在不同采集条件下使用相同技术获取的数据集进行合并。通过聚焦于LIBS和拉曼成像的案例研究,我们展示了我们的方法在提高光谱数据质量、减轻上述局限性影响方面的潜力。结果表明,与单条件图像相比,合并后图像的整体对比度和峰值信噪比有持续改善。此外,从应用角度来看,我们还讨论了我们的方法对样品分类问题的影响。结果表明,在使用合并图像时,基于LIBS的含锂矿物分类(以拉曼作为基准真值)有显著改善,这强化了所提出的解决方案在实际应用中的优势。