姚永祥, 张永军, 万一, 刘欣怡, 郭浩宇. 顾及各向异性加权力矩与绝对相位方向的异源影像匹配[J]. 武汉大学学报 ( 信息科学版), 2021, 46(11): 1727-1736. DOI: 10.13203/j.whugis20200702
引用本文: 姚永祥, 张永军, 万一, 刘欣怡, 郭浩宇. 顾及各向异性加权力矩与绝对相位方向的异源影像匹配[J]. 武汉大学学报 ( 信息科学版), 2021, 46(11): 1727-1736. DOI: 10.13203/j.whugis20200702
YAO Yongxiang, ZHANG Yongjun, WAN Yi, LIU Xinyi, GUO Haoyu. Heterologous Images Matching Considering Anisotropic Weighted Moment and Absolute Phase Orientation[J]. Geomatics and Information Science of Wuhan University, 2021, 46(11): 1727-1736. DOI: 10.13203/j.whugis20200702
Citation: YAO Yongxiang, ZHANG Yongjun, WAN Yi, LIU Xinyi, GUO Haoyu. Heterologous Images Matching Considering Anisotropic Weighted Moment and Absolute Phase Orientation[J]. Geomatics and Information Science of Wuhan University, 2021, 46(11): 1727-1736. DOI: 10.13203/j.whugis20200702

顾及各向异性加权力矩与绝对相位方向的异源影像匹配

Heterologous Images Matching Considering Anisotropic Weighted Moment and Absolute Phase Orientation

  • 摘要: 针对异源遥感影像之间存在光照差异显著、对比度差异大和非线性辐射畸变等问题所导致的匹配难题,提出了一种顾及各向异性加权力矩与绝对相位一致性方向直方图的异源影像匹配方法。首先利用各向异性滤波进行影像非线性扩散,计算影像的相位一致性最大矩和最小矩,并构造各向异性加权力矩方程,求解得到各向异性加权力矩图;然后对相位一致性模型进行扩展,生成绝对相位一致性方向梯度,并结合对数极坐标描述模板,设计了一种绝对相位方向梯度直方图(histogram of absolute phase consistency gradients,HAPCG);最后利用欧氏距离作为匹配测度进行同点名识别。将多组存在光照、对比度和非线性辐射差异的异源遥感影像作为数据源,分别与尺度不变特征变换(scale invariant feature transform,SIFT)、位置尺度定向不变特征变换(position scale orientation-SIFT,PSO-SIFT)、Log-Gabor直方图描述符(Log-Gabor histogram descriptor,LGHD)和辐射变化不敏感特征变换(radiation-variation insensitive feature transform,RIFT)等方法进行对比实验。结果表明,在异源遥感影像匹配中,所提方法在综合匹配性能上明显优于SIFT、PSO-SIFT和LGHD等方法,其平均同名点匹配数量提升了2倍以上,均方根误差为1.83像素。与RIFT方法相比,在匹配同名点相近的情况下,所提方法可以取得更高的匹配精度,能实现异源遥感影像稳健匹配。

     

    Abstract:
      Objectives  With the enrichment of heterologous image acquisition methods, heterologous image is widely used in many fields, such as change detection, target recognition and disaster assessment. However, matching is the premise of heterologous image fusion application. Simultaneously, due to the differences in imaging mechanisms of different sensors, heterologous images are more sensitive to differences in illumination, contrast, and nonlinear radiation distortion. Therefore, heterologous image matching still faces some problems. There are two main problems, heterologous image feature detection is difficult due to the difference of imaging mechanism, which indirectly increases the difficulty of matching, heterologous image has significant differences in illumination, contrast and nonlinear radiation distortion, which reduces the robustness of feature description and easily leads to matching failure directly.
      Methods  This paper proposes a new matching method considering anisotropic weighted moment and the histogram of the absolute phase orientation. Firstly, anisotropic filtering is used for image nonlinear diffusion. Based on this, the maximum moment and minimum moment of image phase consistency are calculated, and the anisotropic weighted moment equation is constructed to obtain the anisotropic weighted moment map. Then, the phase consistency model is extended to establish the absolute phase consistency orientation gradient. Combined with the log polar description template, a histogram of absolute phase consistency gradients (HAPCG) is established. Finally, the Euclidean distance is used as the matching measure for corresponding point recognition.
      Results  Several groups of heterologous remote sensing images with illumination, contrast, and nonlinear radiation distortion are used as data sources of experiments with scale invariant feature transform(SIFT), position scale orientation-SIFT(PSO-SIFT), Log-Gabor histogram descriptor(LGHD) and radiation-variation insensitive feature transform(RIFT) methods, respectively. The results show that HAPCG method is superior to SIFT, PSO-SIFT and LGHD in the comprehensive matching performance of heterologous remote sensing images, and the average matching number of corresponding points is increased by over 2 times, and the root mean square error is 1.83 pixels. When compared with RIFT method, HAPCG method can achieve higher matching accuracy in the case of similar corresponding points and can realize the robust matching of heterologous remote sensing images.
      Conclusions  The proposed HAPCG method can achieve robust matching performance in heterologous remote sensing images and provide stable data support for multi-source image data fusion and other tasks.

     

/

返回文章
返回