Unsupervised extrinsic calibration of depth sensors in dynamic scenes

Intelligent Robots and Systems(2013)

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摘要
While inexpensive depth sensors are becoming increasingly ubiquitous, field of view and self-occlusion constraints limit the information a single sensor can provide. For many applications one may instead require a network of depth sensors, registered to a common world frame and synchronized in time. Historically such a setup has required a tedious manual calibration procedure, making it infeasible to deploy these networks in the wild, where spatial and temporal drift are common. In this work, we propose an entirely unsupervised procedure for calibrating the relative pose and time offsets of a pair of depth sensors. So doing, we make no use of an explicit calibration target, or any intentional activity on the part of a user. Rather, we use the unstructured motion of objects in the scene to find potential correspondences between the sensor pair. This yields a rough transform which is then refined with an occlusion-aware energy minimization. We compare our results against the standard checkerboard technique, and provide qualitative examples for scenes in which such a technique would be impossible.
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关键词
calibration,image processing equipment,image sensors,spatial variables measurement,depth sensor,dynamic scene,explicit calibration target,occlusion aware energy minimization,relative pose,rough transform,self occlusion constraints,time offset,unstructured object motion,unsupervised extrinsic calibration
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