Publication | Closed Access
PhoCaL: A Multi-Modal Dataset for Category-Level Object Pose Estimation with Photometrically Challenging Objects
41
Citations
28
References
2022
Year
EngineeringMachine LearningHuman Pose Estimation3D Pose EstimationField RoboticsAnnotation ProcessMulti-modal Dataset3D Computer VisionImage AnalysisPattern RecognitionRobot LearningMachine VisionDeep Learning3D Object RecognitionComputer VisionMonocular Rgb Methods3D VisionObject RecognitionScene UnderstandingExtended RealityObject Pose EstimationPhotometrically Challenging ObjectsRoboticsScene Modeling
Object pose estimation is crucial for robotic applications and augmented reality. Beyond instance level 6D object pose estimation methods, estimating category-level pose and shape has become a promising trend. As such, a new research field needs to be supported by well-designed datasets. To provide a benchmark with high-quality ground truth annotations to the community, we introduce a multimodal dataset for category-level object pose estimation with photometrically challenging objects termed PhoCaL. PhoCaL comprises 60 high quality 3D models of household objects over 8 categories including highly reflective, transparent and symmetric objects. We developed a novel robot-supported multi-modal (RGB, depth, polarisation) data acquisition and annotation process. It ensures sub-millimeter accuracy of the pose for opaque textured, shiny and transparent objects, no motion blur and perfect camera synchronisation. To set a benchmark for our dataset, state-of-the-art RGB-D and monocular RGB methods are evaluated on the challenging scenes of PhoCaL.
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