Kozoderov Vladimir V, Dmitriev Egor V
Opt Express. 2016 May 16;24(10):A956-65. doi: 10.1364/OE.24.00A956.
To enhance the efficiency of machine-learning algorithms of optical remote sensing imagery processing, optimization techniques are evolved of the land surface objects pattern recognition. Different methods of supervised classification are considered for these purposes, including the metrical classifier operating with Euclidean distance between any points of the multi-dimensional feature space given by registered spectra, the K-nearest neighbors classifier based on a majority vote for neighboring pixels of the recognized objects, the Bayesian classifier of statistical decision making, the Support Vector Machine classifier dealing with stable solutions of the mini-max optimization problem and their different modifications. We describe the related techniques applied for selected test regions to compare the listed classifiers.
为提高光学遥感图像处理机器学习算法的效率,对陆地表面物体模式识别的优化技术进行了改进。为此考虑了不同的监督分类方法,包括基于已配准光谱给出的多维特征空间中任意点之间的欧几里得距离进行操作的度量分类器、基于对识别对象的相邻像素进行多数投票的K近邻分类器、统计决策的贝叶斯分类器、处理极小极大优化问题稳定解的支持向量机分类器及其不同的改进版本。我们描述了应用于选定测试区域的相关技术,以比较所列的分类器。