高光谱成像
反射率
计算机科学
遥感
光谱成像
数字成像
数据采集
RGB颜色模型
计算机视觉
人工智能
成像光谱学
光容积图
多光谱图像
医学影像学
光学
光谱辐射计
化学成像
校准
工作流程
生物医学工程
计量系统
作者
Ning Li,Xin Hu,Xinrong Hu,Kaida Xiao,Jinxing Liang
摘要
ABSTRACT As the optical fingerprint that reflects the physiological states of skin, the accurate acquisition of skin spectral reflectance is crucial for pathological diagnosis, ensuring digital imaging fidelity, and enabling the quantitative evaluation of cosmetic efficacy. This paper surveys the advancements in skin spectral reflectance measurement techniques and their applications. Regarding measurement methods, spectrophotometry (250–2500 nm) delivers high‐precision single‐point data, while hyperspectral imaging (400–1000 nm) enables spatially resolved spectral analysis for applications like skin cancer detection, albeit with higher costs and lower imaging efficiency. Meanwhile, computational spectral imaging leverages RGB reconstruction to achieve high spatial resolution, though metamerism and generalizability limitations remain unresolved. In the field of skin reflectance applications, current efforts focus on three domains of medical diagnostics (e.g., dermatitis grading and blood oxygen monitoring), digital imaging (e.g., skin tone correction), and cosmetic technology (e.g., dark circle assessment, efficacy testing of cosmetics, and beauty device development). Despite these innovations, limitations such as measurement errors on uneven skin, high equipment costs, hardware constraints, and operational inconsistencies in skin tone calibration continue to pose significant barriers. To overcome these limitations, we proposed leveraging compressed sensing for efficient hardware‐level data acquisition and physics‐constrained meta‐learning algorithms to enhance generalizability. This survey offers insights for advancing skin spectral measurement technologies and their analytical applications.
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