Liangzhuang Wei, Xiangwei Yi, Wei Cheng, Yanyun Ma, Yandan Lin
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引用次数: 0
摘要
黑色素沉积和红斑主要是皮肤对环境变化的生理反应,是评价和诊断皮肤状况的重要因素。本研究探讨了黑色素和血红蛋白在皮肤-光相互作用中的关键作用,并将光谱反射率与单点色素值(由MX18采集)相结合,实现了客观的成像肤色评估。竞争性自适应重加权采样算法选择的特征波长与MX18设计的窄波段匹配良好,在保持模型精度的同时有效去除冗余数据。并对7种机器学习方法进行了比较和评价,其中堆叠泛化模型表现最好(黑色素指数RMSEV = 14.23, R v 2 = 0.8634 $$ {R}_v^2=0.8634 $$, RPDv = 2.706;红斑指数RMSEV = 31.74, R v 2 = 0.7505 $$ {R}_v^2=0.7505 $$, RPDv = 2.002)。最后,高光谱成像技术使皮肤色素分布可视化,为皮肤病诊断和美学评价提供了一种快速、无创的分析工具。
Hyperspectral Imaging Combined With Machine Learning Methods to Quantify the Facial Skin Melanin and Erythema.
Melanin deposition and erythema mainly constitute physiological responses of the skin to environmental changes and represent important factors evaluating and diagnosing the skin conditions. This study investigates the critical roles of melanin and hemoglobin in skin-light interaction and combines spectral reflectance with single-point pigment values (collected by Mexameter MX18) to achieve the objective imaging skin color assessment. Feature wavelengths selected by the competitive adaptive reweighted sampling algorithm aligned well with narrow wavelength band designed by MX18, effectively removing redundant data while maintaining the model accuracy. Furthermore, seven machine learning methods were compared and evaluated, among which the stacked generalization model demonstrated the best performance (RMSEV = 14.23, , RPDv = 2.706 for melanin index; RMSEV = 31.74, , RPDv = 2.002 for erythema index). Finally, hyperspectral imaging technology enabled the visualization of skin pigment distribution, providing a rapid and non-invasive analytical tool for dermatological diagnosis and aesthetic evaluation.