로봇 조립 특징 형상 분류를 위한 3D CNN 개발
Development of a 3D Convolution Neural Network for Classifying Robot Assembly form Features
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초록

The voxel-based 3D convolution neural network (3D CNN) proposed in this paper classifies form features to decide candidate assembly directions for automated robot assembly planning. It can classify not only form features of a part but also its candidate assembly directions that are needed for the following assembly planning procedures. In the implemented automated robot assembly planning system, it will take the place of the current rule-based form feature classification module. The 3D CNN uses classification classes that integrate both form features and their directions to assist candidate assembly directions to the following component ordering and robot assembly planning procedures in the automated robot assembly system. This study generated 3D CAD models for each form feature class and converted them into voxel models for the training of the 3D CNN. This study also contrasted rule-based classification methods with voxel-based CNN and evaluated the advantages and disadvantages of each method.

키워드

Form FeaturesRobot Assembly PlanningConvolution Neural Network3D CNNVoxel
제목
로봇 조립 특징 형상 분류를 위한 3D CNN 개발
제목 (타언어)
Development of a 3D Convolution Neural Network for Classifying Robot Assembly form Features
저자
도남철한효녕조준면
발행일
2024-12
저널명
대한산업공학회지
50
6
페이지
437 ~ 447