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Automatic assembly quality inspection based on an unsupervised point cloud domain adaptation model

机译:基于无监督点云域适应模型的自动组装质量检验

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This paper proposes an end-to-end method for automatic assembly quality inspection based on a point cloud domain adaptation model. The method involves automatically generating labeled point clouds from various CAD models and training a model on those point clouds together with a limited number of unlabeled point clouds acquired by 3D cameras. The model can then classify newly captured point clouds from 3D cameras to execute assembly quality inspection with promising performance. The method has been evaluated in an industry case study of pedal car front-wheel assembly. By utilizing CAD data, the method is less time-consuming for implementation in production.
机译:本文提出了一种基于点云域适应模型的自动组装质量检测的端到端方法。 该方法涉及从各种CAD模型自动生成标记的点云,并在那些点云上培训模型,其中3D摄像机获取的有限数量的未标记点云。 然后,该模型可以将新捕获的点云从3D摄像机进行分类,以执行具有有前途的性能的装配质量检查。 该方法已在踏板车前轮组件的行业案例研究中进行评估。 通过利用CAD数据,该方法对生产实施较少耗时。

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