Publication | Closed Access
Object Recognition in 3D Point Clouds Using Web Data and Domain Adaptation
157
Citations
43
References
2010
Year
Object Detection SystemMachine LearningEngineeringField RoboticsPoint Cloud ProcessingPoint Cloud3D Computer VisionImage AnalysisData SciencePattern RecognitionRobot LearningGeometric ModelingMachine VisionObject DetectionComputer Science3D Object RecognitionComputer VisionObject RecognitionDomain AdaptationRobotics
In recent years, object detection has become an increasingly active field of research in robotics. An important problem in object detection is the availability of a sufficient amount of labeled training data to learn good classifiers. In this paper we show how to significantly reduce the need for manually labeled training data by leveraging data sets available on the World Wide Web. Specifically, we show how to use objects from Google’s 3D Warehouse to train an object detection system for 3D point clouds collected by robots navigating through both urban and indoor environments. In order to deal with the different characteristics of the web data and the real robot data, we additionally use a small set of labeled point clouds and perform domain adaptation . Our experiments demonstrate that additional data taken from the 3D Warehouse along with our domain adaptation greatly improves the classification accuracy on real-world environments.
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