Experimental Study on Automatically Assembling Custom Catering Packages With a 3-DOF Delta Robot Using Deep Learning Methods
Journal:
arXiv
Published Date:
May 17, 2025
Abstract
This paper introduces a pioneering experimental study on the automated
packing of a catering package using a two-fingered gripper affixed to a
3-degree-of-freedom Delta parallel robot. A distinctive contribution lies in
the application of a deep learning approach to tackle this challenge. A custom
dataset, comprising 1,500 images, is meticulously curated for this endeavor,
representing a noteworthy initiative as the first dataset focusing on
Persian-manufactured products. The study employs the YOLOV5 model for object
detection, followed by segmentation using the FastSAM model. Subsequently,
rotation angle calculation is facilitated with segmentation masks, and a
rotated rectangle encapsulating the object is generated. This rectangle forms
the basis for calculating two grasp points using a novel geometrical approach
involving eigenvectors. An extensive experimental study validates the proposed
model, where all pertinent information is seamlessly transmitted to the 3-DOF
Delta parallel robot. The proposed algorithm ensures real-time detection,
calibration, and the fully autonomous packing process of a catering package,
boasting an impressive over 80\% success rate in automatic grasping. This study
marks a significant stride in advancing the capabilities of robotic systems for
practical applications in packaging automation.