Abstract

Most industrial parts are instantiated from different parametric templates. The 6DoF (6D) pose estimation tasks are challenging, since some part objects from a known template may be unseen before. This paper releases a new and well-annotated 6D pose estimation dataset for multiple parametric templates in stacked scenarios donated as Multi-Parametric Dataset, where a training set (50K scenes) and a test set (2K scenes) are obtained by automatical labeling techniques. In particular, the test set is further divided into a TEST-L dataset for learning evaluation and a TEST-G dataset for generalization evaluation. Since the part objects from the same template are regarded as a class in the Multi-Parametric Dataset and the number of part objects is infinite, we propose a new 6D pose estimation network as our baseline method, Multi-templates Parametric Pose Network (MPP-Net), aiming to have sufficient generalization ability for parametric part objects in stacked scenarios. To our best knowledge, our dataset and method are the first to jointly achieve 6D pose estimation and parameter values prediction for multiple parametric templates. Many experiments are conducted on the Multi-Parametric Dataset. The mIoU and Overall Accuracy of foreground segmentation and template segmentation on the two test datasets exceed 99.0%. Besides, MPP-Net achieves 92.9% and 90.8% on mAP under the threshold of 0.5cm for translation prediction, achieves 41.9% and 36.8% under the threshold of 5∘ for rotation prediction, and achieves 51.0% and 6.0% under the threshold of 5% for parameter values prediction, on the two test set, respectively. The results have shown that our dataset has exploratory value for 6D pose estimation and parameter values prediction tasks.

Highlights

  • Parametric techniques have been widely used in the field of industrial design [1]

  • The results have shown that our dataset has exploratory value for 6D pose estimation and parameter values prediction tasks

  • To solve the lack of method for stacked scenarios of parametric part objects from multiple templates, we propose a new network with residual modules as our baseline method, Multi-templates Parametric Pose Network, donated as MPP-Net

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Summary

Introduction

Parametric techniques have been widely used in the field of industrial design [1]. The assembly of an industrial product usually requires many parametric part objects from different parametric shapes. A parametric shape is a parametric template described by a set of driven parameters, which can be instantiated as many parametric part objects [2,3]. Many common industrial products comprise a variety of screw parts and nut parts generated from the screw template and the nut template. When we disassemble the recyclable part objects from products into the recycling bins, it is common that there is a stacked scene including parametric part objects from multiple templates. The part objects from the same template are sorted into their own bins according to their parameter values. Due to the varied templates, the frequent changes of parameter values, heavy occlusion, sensor noise, etc., the accurate 6D pose estimation and parameter values prediction in such stacked scenes are challenging

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