Constraint fusion for recognition and localization of articulated objects

作者:Yacov Hel-Or, Michael Werman

摘要

This paper presents a method for localization and interpretation of modeled objects that is general enough to cover articulated and other types of constrained models. The flexibility between the components of the model is expressed as spatial constraints that are fused into the pose estimation during the interpretation process. The constraint fusion assists in obtaining a precise and stable pose of each of the object's components and in finding the correct interpretation. The proposed method can handle any constraint (including inequalities) between any number of different components of the model. The framework is based on Kalman filtering.

论文关键词:Image Processing, Artificial Intelligence, Computer Vision, Computer Image, Correct Interpretation

论文评审过程:

论文官网地址:https://doi.org/10.1007/BF00131146