Publication | Open Access
Robotic grasp detection based on image processing and random forest
47
Citations
26
References
2019
Year
EngineeringDexterous ManipulationField RoboticsCandidate Grasp RectanglesImage AnalysisGrasp RectanglesPattern RecognitionRobot LearningComputational GeometryRobotic Grasp DetectionMachine VisionRoboticsObject DetectionVision RoboticsBaxter RobotDeep Learning3D Object RecognitionComputer VisionObject RecognitionObject Manipulation
Abstract Real-time grasp detection plays a key role in manipulation, and it is also a complex task, especially for detecting how to grasp novel objects. This paper proposes a very quick and accurate approach to detect robotic grasps. The main idea is to perform grasping of novel objects in a typical RGB-D scene view. Our goal is not to find the best grasp for every object but to obtain the local optimal grasps in candidate grasp rectangles. There are three main contributions to our detection work. Firstly, an improved graph segmentation approach is used to do objects detection and it can separate objects from the background directly and fast. Secondly, we develop a morphological image processing method to generate candidate grasp rectangles set which avoids us to search grasp rectangles globally. Finally, we train a random forest model to predict grasps and achieve an accuracy of 94.26%. The model is mainly used to score every element in our candidate grasps set and the one gets the highest score will be converted to the final grasp configuration for robots. For real-world experiments, we set up our system on a tabletop scene with multiple objects and when implementing robotic grasps, we control Baxter robot with a different inverse kinematics strategy rather than the built-in one.
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