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Joint Optimization of Image Registration and Comparametric Exposure Compensation Based on the Lucas-Kanade Algorithm

机译:基于Lucas-Kanade算法的图像登记和比较曝光补偿的联合优化

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An iterative registration algorithm, the Lucas-Kanade algorithm, is combined with an exposure compensation algorithm to jointly optimize the spatial registration and the exposure compensation. The coordinate descent method is employed to minimize a mean squared error between image pairs. Based on a simple regression model, a nonparametric estimator, the empirical conditional mean and its polynomial fitting are used as histogram transformation functions for the exposure compensation. The proposed algorithm performs a good registration for real perspective and microscopic images, and can easily adopt other exposure compensation approaches and variations of the Lucas-Kanade algorithms due to its implicit flexibility.
机译:迭代注册算法,卢卡斯kanade算法与曝光补偿算法组合,共同优化空间登记和曝光补偿。采用坐标血换方法来最小化图像对之间的平均平均误差。基于简单的回归模型,非参数估计器,经验条件均值及其多项式拟合用作曝光补偿的直方图变换函数。所提出的算法对实际透视和微观图像进行了良好的注册,并且由于其隐式的灵活性,可以容易地采用卢卡斯 - kanade算法的其他曝光补偿方法和变化。

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