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A robot hand grasp over 500 totally new objects without fail? Zero-shot, single-view & super reliable ⬇️ + Paper Grasping random objects is hard for robots, especially when shapes, weights, and materials vary. RobustDexGrasp solves this with a smart new way of seeing and controlling the hand, leading to...

37,980 Aufrufe • vor 1 Jahr •via X (Twitter)

8 Kommentare

Profilbild von Edward S… 🔋
Edward S… 🔋vor 1 Jahr

@Scobleizer here's your helping hand...

Profilbild von Soccer Bot™
Soccer Bot™vor 1 Jahr

Experience the bot completely reimagined. 🌟 A completely new design, reminders for match prediction, notifications when games are interrupted, continued or postponed. New commands like /features and /standings and new languages and much more.

Profilbild von Hui Zhang
Hui Zhangvor 1 Jahr

Thanks for sharing!

Profilbild von Ilir Aliu - eu/acc
Ilir Aliu - eu/accvor 1 Jahr

Amazing work guys!!

Profilbild von Fridax
Fridaxvor 1 Jahr

The hand of agi

Profilbild von Based Checker
Based Checkervor 1 Jahr

Is the product the EOA tool, the software or both? Also, is the video at 1x speed? If so, that's really impressive.

Profilbild von Semi Vision👁️👁️
Semi Vision👁️👁️vor 1 Jahr

He is good

Profilbild von kfant
kfantvor 1 Jahr

code soooon eh

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