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Deep Learning-Driven Robot Arm Control Fusing Convolutional Visual Perception and Predictive Modeling for Motion Planning

Zhongzhen Yan, Yiming Chang, Lukang Yuan, Feifei Wei, Xianglong Wang, Xinhua Dong, Hongmu Han

Year
2024
Citations
2

Abstract

The wide application of robotic technology in various industries from industrial automation to medical assistance is gradually changing our production and lifestyle, and has attracted widespread attention in many fields. However, existing robotic control systems often grapple with limited flexibility and poor adaptability to complex environments, particularly in highly dynamic operational contexts. Against this backdrop, the integration of deep learning technologies offers new possibilities in enhancing robotic perception and decision-making, especially in visual perception and motion planning. To address these challenges, we have introduced a novel robotic arm control network model, MPC-WGAN-Faster R-CNN, which combines Model Predictive Control concepts with Wasserstein Generative Adversarial Networks and Faster R-CNN visual recognition technology. This integration aims to improve the precision and adaptability of robotic arm operations in complex environments.

Keywords

Computer scienceArtificial intelligencePerceptionMotion (physics)Computer visionRobotControl (management)Deep learningMotion planningHuman–computer interaction

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