Li Qing-bo, Wu Ke-jiang, Gao Qi-shuo
Guang Pu Xue Yu Guang Pu Fen Xi. 2016 Dec;36(12):4067-71.
Because of ground observation instruments and other factors, we can not recognize the space target only from the external shape in the image. Since the reflection spectrum of the space target is determined by the surface material of space object, spectral analysis technique can be used for classifying the space objects. Based on the K-nearest neighbor algorithm (KNN), a method called adaptive weight k-local hyperplane (AWKH) is proposed in this paper. The main improvement of the algorithm is that weight discrimination is added in the processes of calculating the hyperplane distance between predicted samples. The algorithm constructs a hyperplane model by using the difference between the groups and within group ratio for the weights of features. In order to verify the classification effectiveness and efficiency of the algorithm, this paper carried out four sets of verification experiments. In the first set of experiments, 9 kinds of common materials were extracted from the database of United State Geological Survey. Then 3 kinds of these materials were mixed into multi-class objections. In the second and third sets of experiments, the spectra of four normal space target materials were mixed in different classes. Then these classes were identified from the visible and near-infrared wave bands. In the fourth set of experiments, four square models of hexahedron were classified by the spectra of their surface material. The experimental results indicate that the AWKH algorithm has more advantages in identification accuracy and effectiveness of the complex samples by comparing with the support vector machine (SVM) method.
由于地面观测仪器等因素的限制,我们无法仅从图像中的外部形状来识别空间目标。由于空间目标的反射光谱由空间物体的表面材料决定,因此光谱分析技术可用于对空间物体进行分类。基于K近邻算法(KNN),本文提出了一种自适应权重k局部超平面(AWKH)方法。该算法的主要改进在于在计算预测样本与超平面距离的过程中加入了权重判别。该算法利用组间差异和组内比率来构建特征权重的超平面模型。为了验证该算法的分类有效性和效率,本文进行了四组验证实验。在第一组实验中,从美国地质调查局的数据库中提取了9种常见材料。然后将其中3种材料混合成多类目标。在第二组和第三组实验中,将四种正常空间目标材料的光谱混合到不同类别中。然后从可见光和近红外波段对这些类别进行识别。在第四组实验中,通过六面体的四个方形模型表面材料的光谱对其进行分类。实验结果表明,与支持向量机(SVM)方法相比,AWKH算法在复杂样本的识别精度和有效性方面具有更多优势。