Feature-Based Object Detection and Pose Estimation Based on 3D Cameras and CAD Models for Industrial Robot Applications

Tuomas Seppälä, Janne Saukkoriipi, Taneli Lohi, Samuli Soutukorva, T. Heikkilä, J. Koskinen
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引用次数: 1

Abstract

This paper presents a feature-based object detection and pose estimation method. In this approach, a user selects geometric features from a CAD model of an object. The selected features are then matched against measured features from the 3D cameras. Software modules were developed for the method and were tested in a robot cell. Based on the results, our approach provides a fast way to configure and program the pose estimation system for new objects. Target applications of the approach are in small series and agile, even one-of-a-kind manufacturing.
基于三维相机和CAD模型的工业机器人特征目标检测和姿态估计
提出了一种基于特征的目标检测和姿态估计方法。在这种方法中,用户从对象的CAD模型中选择几何特征。然后将选择的特征与来自3D相机的测量特征进行匹配。为该方法开发了软件模块,并在机器人单元中进行了测试。基于这些结果,我们的方法为新目标的姿态估计系统配置和编程提供了一种快速的方法。该方法的目标应用是小批量和敏捷,甚至是独一无二的制造。
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