Li Jing, Deng Baosong, Tang Rongfu, Wang Zhengming, Yan Ye
IEEE Trans Image Process. 2019 Oct 30. doi: 10.1109/TIP.2019.2949424.
Accurate and efficient image alignment is the core problem in the research of panoramic stitching nowadays. This paper proposes a local-adaptive image alignment method based on triangular facet approximation, which directly manipulates the matching data in the camera coordinates, and therefore rises superior to the imaging model of cameras. A more robust planar transformation model is proposed and extended to be local-adaptive via combining it with two weighting strategies. By approximating the scene as a combination of adjacent triangular facets, the planar and spherical triangulation strategies are introduced to more efficiently align normal and fisheye images respectively. The efficiency of the proposed method are verified through the comparative experiments on several challenging cases both qualitatively and quantitatively.
准确高效的图像配准是当今全景拼接研究中的核心问题。本文提出了一种基于三角面片逼近的局部自适应图像配准方法,该方法直接在相机坐标系中处理匹配数据,因此优于相机成像模型。提出了一种更鲁棒的平面变换模型,并通过与两种加权策略相结合将其扩展为局部自适应模型。通过将场景近似为相邻三角面片的组合,分别引入平面和球面三角剖分策略来更有效地配准普通图像和鱼眼图像。通过在几个具有挑战性的案例上进行定性和定量的对比实验,验证了所提方法的有效性。