Skill-Based Edge-Brain Smart Manufacturing: A Case of Grasp Pose Selection Skill
  • Lee, Sukhan
  • Jang, Byungwoo
  • Hyeon, Seokjong
  • Lee, Soojin
  • Lee, Jaesun
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초록

The edge-brain framework (EBF) is a S/W framework that allows manufacturers to easily integrate AI-empowered robot work skills into a legacy production system in an edge computing environment with minimal time and effort. For EBF-based smart manufacturing, is a skill-based task-level robot programming environment that plays a key role. In this paper, we present the grasp pose selection skill as a case study to demonstrate the proposed skill-based edge-brain smart manufacturing. The proposed grasp-pose selection skill determines the optimal 6D grasp pose associated with the target object in a cluttered workspace by taking into consideration grasp stability, object manipulability, and collision-free path efficacy. To achieve a real-time operation of optimal grasp pose selection skill, deep learning networks are designed to compute, in particular, the manipulability and collision-free path efficacy indices. Experiments demonstrate the effectiveness of the proposed real-time grasp pose selection skill developed for EBF-based smart manufacturing. © 2024 The Authors. Published by Elsevier B.V.

키워드

Collision-Free Path EfficacyEdge Brain FrameworkGrasp Pose Selection SkillGrasp StabilityObject Manipulability
제목
Skill-Based Edge-Brain Smart Manufacturing: A Case of Grasp Pose Selection Skill
저자
Lee, SukhanJang, ByungwooHyeon, SeokjongLee, SoojinLee, Jaesun
DOI
10.1016/j.procs.2025.02.002
발행일
2025-02
유형
Conference paper
저널명
Procedia Computer Science
253
페이지
2776 ~ 2790