Automatic registration of multimodal remote sensing data (e.g., optical, LiDAR, SAR) is a challenging task due to the significant non-linear radiometric differences between these data. To address this problem, this paper proposes a novel feature descriptor named the Histogram of Orientated Phase Congruency (HOPC), which is based on the structural properties of images. Furthermore, a similarity metric named HOPCncc is defined, which uses the normalized correlation coefficient (NCC) of the HOPC descriptors for multimodal registration. In the definition of the proposed similarity metric, we first extend the phase congruency model to generate its orientation representation, and use the extended model to build HOPCncc. Then a fast template matching scheme for this metric is designed to detect the control points between images. The proposed HOPCncc aims to capture the structural similarity between images, and has been tested with a variety of optical, LiDAR, SAR and map data. The results show that HOPCncc is robust against complex non-linear radiometric differences and outperforms the state-of-the-art similarities metrics (i.e., NCC and mutual information) in matching performance. Moreover, a robust registration method is also proposed in this paper based on HOPCncc, which is evaluated using six pairs of multimodal remote sensing images. The experimental results demonstrate the effectiveness of the proposed method for multimodal image registration.
翻译:多式联运遥感数据(如光学、激光雷达、合成孔径雷达)的自动登记是一项具有挑战性的任务,因为这些数据之间在非线性辐射测量方面存在显著差异。为了解决这一问题,本文件提议了一个名为 " 定向相容阶段直图(HOPC) " 的新特征描述符(HOPC),根据图像的结构特性进行。此外,还界定了一个类似度指标,即名为HOPCncc,使用HOPC多式联运注册描述仪的正常相关系数(NCC)。在拟议的类似度指标的定义中,我们首先扩大阶段一致性模型,以产生其方向代表,并使用扩展模型来建立HOPncc。然后,为该指标设计了一个快速模板匹配方案,以探测图像之间的控制点。拟议的HOPncc旨在捕捉图像之间的结构相似性,并用各种光学、液态雷达、合成和地图数据进行了测试。结果显示,HOPcc在拟议的非线性辐射测量模型模型模型中,并超越了HPC的状态特征模型的模型模型。随后,在HPC的模拟图像的模拟登记中采用一种模拟模拟图像的模拟测试方法。