Liu Zhongzheng, Song Shalei, Wang Binhui, Gong Wei, Ran Yanhong, Hou Xiaxia, Chen Zhenwei, Li Faquan
Opt Express. 2022 Aug 1;30(16):28614-28631. doi: 10.1364/OE.461764.
With the rapid development of light detection and ranging (LiDAR) technology, multispectral LiDAR (MSL) can realize three-dimensional (3D) imaging of the ground object by acquiring rich spectral information. Although color restoration has been achieved on the basis of the full-waveform data of MSL, further improvement of the visual effect of color point clouds still faces many challenges. In this paper, a highlight removal method for MSL color point clouds is proposed to explore the potential of 3D visualization. First, the MSL reflection model are introduced according to radar equation and Phong model, and the restored color of the MSL point clouds is determined to comprise diffuse and specular components. Second, a data conversion method is proposed to improve the massive point cloud processing efficiency by spatial dimension reduction and data compression. Then, the visual saliency map after color denoising is used to obtain the highlight region, the unknown information of which is recovered based on the global or local color information. Finally, three representative targets are selected and evaluated by qualitative and quantitative validation, which verifies that the method can effectively recover the high-quality highlight-free point clouds of MSL.
随着光探测与测距(LiDAR)技术的快速发展,多光谱LiDAR(MSL)能够通过获取丰富的光谱信息实现地面物体的三维(3D)成像。尽管基于MSL的全波形数据已经实现了颜色恢复,但进一步提升彩色点云的视觉效果仍面临诸多挑战。本文提出一种针对MSL彩色点云的高光去除方法,以探索3D可视化的潜力。首先,根据雷达方程和Phong模型引入MSL反射模型,并确定MSL点云恢复后的颜色由漫反射和镜面反射分量组成。其次,提出一种数据转换方法,通过空间降维和数据压缩提高海量点云的处理效率。然后,利用去噪后的视觉显著性图获取高光区域,并基于全局或局部颜色信息恢复其中的未知信息。最后,选取三个具有代表性的目标进行定性和定量验证评估,验证了该方法能够有效恢复高质量的MSL无高光点云。