The complementary fusion of light detection and ranging (LiDAR) data and image data is a promising but challenging task for generating high-precision and high-density point clouds. This study proposes an innovative LiDAR-guided stereo matching approach called LiDAR-guided stereo matching (LGSM), which considers the spatial consistency represented by continuous disparity or depth changes in the homogeneous region of an image. The LGSM first detects the homogeneous pixels of each LiDAR projection point based on their color or intensity similarity. Next, we propose a riverbed enhancement function to optimize the cost volume of the LiDAR projection points and their homogeneous pixels to improve the matching robustness. Our formulation expands the constraint scopes of sparse LiDAR projection points with the guidance of image information to optimize the cost volume of pixels as much as possible. We applied LGSM to semi-global matching and AD-Census on both simulated and real datasets. When the percentage of LiDAR points in the simulated datasets was 0.16%, the matching accuracy of our method achieved a subpixel level, while that of the original stereo matching algorithm was 3.4 pixels. The experimental results show that LGSM is suitable for indoor, street, aerial, and satellite image datasets and provides good transferability across semi-global matching and AD-Census. Furthermore, the qualitative and quantitative evaluations demonstrate that LGSM is superior to two state-of-the-art optimizing cost volume methods, especially in reducing mismatches in difficult matching areas and refining the boundaries of objects.
翻译:光探测和测距(LiDAR)数据和图像数据的补充融合光检测和测距(LiDAR)数据和图像数据的互补融合是生成高精度和高密度云层的一个有希望但具有挑战性的任务。本研究提出了名为LIDAR-制导立体匹配(LGSM)的创新的LIDAR制导立体匹配(LGSM)方法,该方法考虑到图像同质区域持续差异或深度变化所代表的空间一致性。LGSM首先根据其颜色或强度的相似性检测每个LIDAR投影点的均匀像素。接下来,我们提议了一个河床增强功能,以优化LIDAR投影点的成本量和均匀质量等值的比重,优化利DAR投影点的成本量和均匀质量等值。 我们的配方扩大了稀释的LDAR投影点的制约范围,并指导图像信息尽可能优化像量的比值。 我们应用LGSMMM在模拟和真实数据集中检测到的硬度和半全球级标值的比值数据。 当精度的精确度达到了LDG的精确度时,我们的方法的精确度和精确度的比值的比值在LDADSDAx的比值水平上展示的比值水平上显示的比值水平,同时提供了精确度和精确度水平的精确度水平。