EPFL researchers unveil kinematic intelligence for robot skill transfer

Researchers at the Swiss École Polytechnique Fédérale de Lausanne have developed Kinematic Intelligence, a framework that enables robots to learn skills from a single human demonstration and transfer them to different hardware without retraining. The AI-free system avoids joint singularities, ensuring safe operation across varied robot designs. The work is detailed in a paper published in Science Robotics.

Roboticists have long faced challenges in transferring learned skills between robots with different designs, such as varying joint lengths or orientations. A team led by Sthithpragya Gupta at EPFL addressed this with Kinematic Intelligence, which embeds a robot's physical constraints—like joint limits and singularities—directly into its control policy from the start. 'With new designs come different capabilities and constraints,' said co-author Durgesh Haribhau Salunkhe. 'The problem is to adapt to these constraints and capabilities—to faithfully replicate the actions demonstrated by a human.'

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Sony AI robot Ace defeating a professional table tennis player on an Olympic-sized court.
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Sony's AI robot Ace beats professional table tennis players

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Sony AI's table tennis robot Ace has challenged and sometimes defeated professional human players at an expert level. A study published Wednesday in Nature details how it learned via reinforcement learning and performed on an Olympic-sized court at Sony's Tokyo headquarters. The robot uses nine camera eyes to track the ball's spin by its logo.

Physical Intelligence, a San Francisco startup founded in 2024, is advancing robot control systems that learn multiple tasks using vision-language-action models derived from large language models. The company has demonstrated robots performing varied activities such as making coffee, folding clothes and cooking sweet potatoes based on verbal instructions.

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California-based Generalist AI has launched Gen-1, a new physical AI model that enables robots to handle tasks like folding laundry, fixing other robots and stuffing cash into wallets. The model draws on human dexterity data collected worldwide to teach robots 'physical common sense.' Co-founder Pete Florence described it as a major advance for real-world robotics.

Nvidia's GTC event at the San Jose McEnery Convention Center featured demonstrations of several robots, including those from IntBot, Humanoid, and Noble Machines. Attendees interacted with AI-powered bots providing directions and fetching items via fleet control. The displays illustrated potential advancements in robotics, as predicted by Nvidia CEO Jensen Huang.

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