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🌱 How do you control a robot whose body is constantly growing, buckling, and reshaping? 📷 Put 19 cameras on it. Meet PanoVine, the first autonomous vine robot system. We distribute 19 cameras along a 6 meters, 7-DoF soft growing vine robot, giving it whole-body visual feedback of both...

17,147 Aufrufe • vor 20 Tagen •via X (Twitter)

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Jim Fan

292,967 Aufrufe • vor 4 Monaten

Elon Musk: As we advance the Neuralink devices, you should be able to actually have full body control and sensors from an Optimus robot So you could basically inhibit an Optimus robot. It's not just the hand, but the whole thing. So you could like basically mentally remote into an Optimus robot and be kind of cool. The future is gonna be weird, but pretty cool And then another thing that could be done also is like for people that have say lost a limb, lost an arm or leg or something like that, then we think in the future we'll be able to attach an Optimus arm or legs and so you kind of like I remember that scene from a Star Wars where Luke Skywalker gets his hand, you know, chopped off with a lightsaber and he gets kind of a robot hand And I think that's the kind of thing that we'll be able to do in the future working with Neuralink and Tesla. So it goes far beyond just operating a robot hand, but replacing limbs and having kind of a whole body robot experience. And then I think another thing that will be possible like I think it's very likely in the future is to be able to bridge the where the damaged neurons So you can take the signal from the brain and and transmit that signal past where the neurons are damaged or strained to the rest of the body, so you could reanimate the body. So that if you have a Neuralink implant in the brain and then one in the spinal cord, then you can actually bridge the signals and you could walk again and have full body functionality Obviously that's what people would prefer. To be clear, we realize that would be the preferred outcome. And so that even if you have a broken neck, you could still we believe I'm actually at this point I'd say fairly confident that at some point in the future we'll be able to restore full body functionality

X Freeze

229,737 Aufrufe • vor 8 Monaten