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Monocular Camera-Based Robotic Pick-and-Place in Fusion Applications

Ruochen Yin, Huapeng Wu, Ming Li, Yong Cheng, Yuntao Song, Heikki Handroos

Year
2023
Citations
2
Access
Open access

Abstract

Robotic pick-and-place represents a nascent but swiftly evolving field in automation research. Most existing research relies on three-dimensional (3D) observations obtained directly from the 3D sensor or recovered by the two-dimensional (2D) camera from multiple perspectives. In this paper, we introduce an end-to-end pick-and-place neural network that solely leverages simple yet readily accessible data, namely, monocular camera and forward kinematics, for fusion applications. Additionally, our approach relies on the deep reinforcement learning (DRL) algorithm to facilitate robots in comprehending and completing tasks. The entire process is data-driven, devoid of any artificially designed task sessions, which imbues our approach with enhanced flexibility and versatility. The proposed method exhibits excellent performance in our experiment.

Keywords

Artificial intelligenceComputer scienceComputer visionTask (project management)Flexibility (engineering)Process (computing)RobotSensor fusionMonocularHuman–computer interaction

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