Spectral Reflectance Estimation from Camera Response Using Local Optimal Dataset and Neural Networks.

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY Journal of Imaging Pub Date : 2024-09-09 DOI:10.3390/jimaging10090222
Shoji Tominaga, Hideaki Sakai
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Abstract

In this study, a novel method is proposed to estimate surface-spectral reflectance from camera responses that combine model-based and training-based approaches. An imaging system is modeled using the spectral sensitivity functions of an RGB camera, spectral power distributions of multiple light sources, unknown surface-spectral reflectance, additive noise, and a gain parameter. The estimation procedure comprises two main stages: (1) selecting the local optimal reflectance dataset from a reflectance database and (2) determining the best estimate by applying a neural network to the local optimal dataset only. In stage (1), the camera responses are predicted for the respective reflectances in the database, and the optimal candidates are selected in the order of lowest prediction error. In stage (2), most reflectance training data are obtained by a convex linear combination of local optimal data using weighting coefficients based on random numbers. A feed-forward neural network with one hidden layer is used to map the observation space onto the spectral reflectance space. In addition, the reflectance estimation is repeated by generating multiple sets of random numbers, and the median of a set of estimated reflectances is determined as the final estimate of the reflectance. Experimental results show that the estimation accuracies exceed those of other methods.

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利用局部最优数据集和神经网络从相机响应估算光谱反射率
本研究提出了一种新方法,结合基于模型和基于训练的方法,从相机响应估算表面光谱反射率。利用 RGB 摄像机的光谱灵敏度函数、多个光源的光谱功率分布、未知表面光谱反射率、加法噪声和增益参数对成像系统进行建模。估计过程包括两个主要阶段:(1) 从反射率数据库中选择局部最优反射率数据集;(2) 仅对局部最优数据集应用神经网络来确定最佳估计值。在第(1)阶段,针对数据库中的各反射率预测摄像机的响应,并按照预测误差最小的顺序选出最佳候选。在第(2)阶段,通过使用基于随机数的加权系数对局部最优数据进行凸线性组合,获得大部分反射率训练数据。使用带有一个隐藏层的前馈神经网络将观测空间映射到光谱反射空间。此外,通过生成多组随机数重复进行反射率估计,并确定一组估计反射率的中值作为反射率的最终估计值。实验结果表明,估计精度超过了其他方法。
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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
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