首页> 外文期刊>Optik: Zeitschrift fur Licht- und Elektronenoptik: = Journal for Light-and Electronoptic >Color reproduction method by support vector regression for color computer vision
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Color reproduction method by support vector regression for color computer vision

机译:支持向量回归的彩色计算机视觉色彩再现方法

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摘要

In the color computer vision system, the nonlinearity of the camera and computer screen may result in different colors between the screen and the actual color of objects, which requires for color calibration. In this paper, support vector regression (SVR) method was introduced to reproduce the colors of the nonlinear imaging system. Firstly, successive 3σ method was used to eliminate the large errors found in the color measurement. Then, based on the training set measured in advance, SVR model of RBF kernel was applied to map the nonlinear imaging system. In this step, two important parameters (C, γ) were optimized by the Least Mean Squared Validating Errors algorithm to get the best SVR model. Finally, this optimized model could predict the real values displayed on the screen. Compared with quadratic polynomial regression, BP neural network and relevance vector machine, the optimized SVR model has better ability in color reproduction performance and generalization.
机译:在彩色计算机视觉系统中,相机和计算机屏幕的非线性可能导致屏幕和对象的实际颜色之间的颜色不同,这需要进行颜色校准。本文介绍了支持向量回归(SVR)方法来重现非线性成像系统的颜色。首先,使用连续3σ方法消除了色彩测量中发现的较大误差。然后,基于预先测量的训练集,将RBF核的SVR模型应用于非线性成像系统的映射。在此步骤中,通过最小均方验证误差算法对两个重要参数(C,γ)进行了优化,以获得最佳的SVR模型。最后,这种优化的模型可以预测屏幕上显示的实际值。与二次多项式回归,BP神经网络和相关向量机相比,优化后的SVR模型在色彩还原性能和泛化方面具有更好的能力。

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