Objective: In order to solve the duality problem in pose estimation from single circle in the machine vision
an approach based on Euclidean angular constraints is presented to identify the unique pose result and the accuracy of pose estimation method is analyzed
which provides constructive suggestion on achieving accurate pose estimation from circles based on the experiments result. Method: First
the pose of single circle can be recovered from its projection with a calibrated camera
though the result is ambiguous; then
the unique pose result is indentified based on the Euclidean angular invariant which is a prior knowledge. Finally
the accuracy of the pose result is analyzed based on the theory of error propagation. Result: Experimental results indicate that the absolute angle error of circle plane is within 0.2 degree
the relative error of position determination is within 5‰
the absolute error of reconstructed distance between lines is within 8‰. Conclusion: It can accurately identify the unique pose from the ambiguous results from a single circle
the whole calculation process is concise and feasible to perform
the result is robust and reliable as well as a high accuracy.