A Robust Multispectral Point Cloud Generation Method Based on 3-D Reconstruction From Multispectral Images
Chen Wang, Yanfeng Gu, Xian Li
Abstract
Multispectral point cloud is a novel type of data rich in spectral and spatial information. 3D reconstruction is a low-cost solution for acquiring multispectral point cloud. However, most of the existing methods have been developed for RGB images, which are inapplicable to multispectral images due to the special structure of multispectral sensors and the nonlinear intensity differences. In this paper, a robust 3D reconstruction method for multispectral images is proposed to generate multispectral point cloud by harnessing their spatial and spectral information. Considering the characteristics of multispectral image acquisition, reflectance correction and band alignment steps are introduced into the proposed method, aiming to reduce the impact of band differences and spatial errors on 3D reconstruction. Subsequently, a fused multispectral feature extraction is employed to provide more potential reconstruction feature points. To reduce the mismatched feature points induced by the spectra of vegetation regions, an NDVI-guided feature matching algorithm is proposed that provides accurate correspondence calculation for multispectral images reconstruction. The experiments compared with several well-known methods and a commercial software on two datasets have shown superior reconstruction performance.