Although the theory of constrained least squares (CLS) estimation is well known, it is usually applied with the view that the constraints to be imposed are unavoidable. However, there are cases in which constraints are optional. For example, in camera color calibration, one of several possible color processing systems is obtained if a constraint on the row sums of a desired color correction matrix is imposed; in this example, it is not clear a priori whether imposing the constraint leads to better system performance. In this paper, we derive an exact expression connecting the constraint to the increase in fitting error obtained from imposing it. As another contribution, we show how to determine projection matrices that separate the measured data into two components: the first component drives up the fitting error due to imposing a constraint, and the second component is unaffected by the constraint. We demonstrate the use of these results in the color calibration problem.
翻译:虽然限制最小方(CLS)估计的理论是众所周知的,但通常应用该理论时认为,施加的限制是不可避免的,但有些情况下,限制是可选的。例如,在摄像彩色校准中,如果对一个理想的颜色校正矩阵的行数加限制,则可能采用的若干色处理系统之一;在这个例子中,施加限制是否导致更好的系统性能,尚不十分明确。在本文中,我们得出一个精确的表达方式,将限制与强制实施时发生的适当差错的增加联系起来。作为另一项贡献,我们展示了如何确定将测量的数据分为两个组成部分的预测矩阵:第一个组成部分因施加限制而使适当的差错上升,第二个组成部分不受限制的影响。我们展示了这些结果在色校准问题上的使用情况。