Zhiqiang CuiZhaoyang LiaoXubin LinKezheng SunTaobo ChengXuefeng Zhou
Abstract Accurate and efficient workpiece measurement is crucial for workpiece processing and quality monitoring. Non-contact optical measurement methods have gained more attention due to their simplicity, efficiency, and flexibility compared to complicated and inefficient contact measurement methods. Multi-view registration of measurement data is a key issue in workpiece measurement, as it relies on the system’s geometric accuracy and motion stability, presenting challenges such as the insufficient overlap of multi-viewpoint cloud data and cumulative error. To address these challenges, this paper proposes a multi-view planning and registration algorithm with a low overlap rate. The multi-view planning algorithm employs a greedy method to plan the scanning viewpoints of the workpiece to obtain complete point cloud data efficiently. The multi-view registration algorithm extracts features using a multi-scale geometric feature extraction network, matches the features based on the Hungarian algorithm, builds a graph, and optimizes workpiece positions based on the G2O algorithm for multi-view registration, effectively reducing cumulative error. Measurement experiments on blade workpieces confirm the feasibility of the proposed algorithms.
张元 Zhang Yuan李晓燕 Li Xiaoyan韩燮 Han Xie
Jiabo XuYirui ZhangYanni ZouPeter Liu
Hyeon‐Woo JeongDong-Keun KimKang-Sun Choi
Bin YanJiayong CaoJianuo LiuXingyu Deng