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A bee-like robot currently under development at the Massachusetts Institute of Technology (MIT) is part of a new generation ...
The motion control of humanoid robots is becoming the next hot research area for the application of reinforcement learning ...
AM970: Reshaping Smart Mobile Robot Perception and Decision-Making Capabilities The release of the AM970 all-scenario smart robot main control SoC represents a significant breakthrough for Yiwei ...
Morning Overview on MSN20h
Humanoid robots from China are reshaping the future
The emergence of humanoid robots from China marks a significant leap in the realm of artificial intelligence and robotics.
Robots don't have instincts, so they have to be taught how to fall gracefully and that is where a new robot algorithm comes in.
Algorithm tells robots where nearby humans are headed Date: June 12, 2019 Source: Massachusetts Institute of Technology Summary: A new tool for predicting a person's movement trajectory may help ...
Collaborative learning -- for robots: New algorithm Date: June 25, 2014 Source: Massachusetts Institute of Technology Summary: Machine learning, in which computers learn new skills by looking for ...
Robots are great at many things, but working together in an unfamiliar setting isn't one of them – until now, that is. A team of researchers from MIT has developed an algorithm that streamlines ...
Robot dogs can move efficiently, but not all that naturally -- and no, twerking doesn't count. Virginia Tech researchers think they can do better. They're developing a combination of algorithms ...
When you’re a robot, a new motion-planning algorithm can mean the difference between waving your arms around like an inflatable tube man and reaching for a coffee mug like you’re supposed to ...
Like other computer vision algorithms used to train robots, their robot learned about its world by first sifting through a database of 4,000 three-dimensional objects spread across ten different ...
Today's industrial robots are remarkably efficient—as long as they're in a controlled environment where everything is exactly where they expect it to be.
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