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Mani-GPT: A Generative Model for Interactive Robotic Manipulation

Zhe Zhang, Wei Chai, Jiankun Wang

2023Procedia Computer Science15 citationsDOIOpen Access PDF

Abstract

In real-world scenarios, human dialogues are multi-round and diverse. Furthermore, human instructions can be unclear and human responses are unrestricted. Interactive robots face difficulties in understanding human intents and generating suitable strategies for assisting individuals through manipulation. In this article, we propose Mani-GPT, a Generative Pre-trained Transformer (GPT) for interactive robotic manipulation. The proposed model has the ability to understand the environment through object information, understand human intent through dialogues, generate natural language responses to human input, and generate appropriate manipulation plans to assist the human. This makes the human-robot interaction more natural and humanized. In our experiment, Mani-GPT outperforms existing algorithms with an accuracy of 84.6% in intent recognition and decision-making for actions. Furthermore, it demonstrates satisfying performance in real-world dialogue tests with users, achieving an average response accuracy of 70%.

Topics & Concepts

Computer scienceGenerative grammarHuman–computer interactionTransformerRobotHuman–robot interactionArtificial intelligenceGenerative modelNatural language understandingNatural languageQuantum mechanicsVoltagePhysicsMultimodal Machine Learning ApplicationsTopic ModelingReinforcement Learning in Robotics