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Jason Liu
317 posts
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Jason Liu
@JasonJZLiu
PhD student @CMU_Robotics | Prev @NvidiaAI @UofT
jasonjzliu.com
Joined September 2014
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    Jason Liu
    @JasonJZLiu
    Jun 11
    💥Introducing FACTR 2, learning external force sensing on commodity robot arms without needing dedicated sensors. We show that learned force signals enable force-feedback teleop on low-cost arms and improve BC policies. FACTR 2 consists of: 1. Neural External Torque (NEXT):
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    Jason Liu
    @JasonJZLiu
    Mar 31, 2025
    FACTR is now open source! You can now build your own low-cost force-feedback teleop system. Hardware: github.com/JasonJZLiu/FAC… Teleop Code: github.com/RaindragonD/fa… Training Code: github.com/RaindragonD/fa…
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    Jason Liu
    @JasonJZLiu
    Feb 25, 2025
    Low-cost teleop systems have democratized robot data collection, but they lack any force feedback, making it challenging to teleoperate contact-rich tasks. Many robot arms provide force information — a critical yet underutilized modality in robot learning. We introduce: 1. 🦾A
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    GitHub - JasonJZLiu/FACTR_Hardware: FACTR Hardware
    From github.com
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    Jason Liu
    @JasonJZLiu
    Feb 25, 2025
    Low-cost teleop systems have democratized robot data collection, but they lack any force feedback, making it challenging to teleoperate contact-rich tasks. Many robot arms provide force information — a critical yet underutilized modality in robot learning. We introduce: 1. 🦾A
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    Jason Liu
    @JasonJZLiu
    Apr 28, 2025
    So cool to see end-to-end dexterous grasping being applied to humanoids
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    Ritvik Singh
    @ritvik_singh9
    Apr 28, 2025
    Over the past few months we've been working with Boston Dynamics on end-to-end dexterous manipulation for the EAtlas:
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    Jason Liu
    @JasonJZLiu
    Oct 27, 2022
    Excited to share what we have been working on over the past months! We demonstrate agile in-hand manipulation achieved via GPU accelerated sim-to-real transfer. Both the RL policy and the pose estimation are entirely trained in simulation using @NVIDIA Isaac Sim and Gym!
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    Ankur Handa
    @ankurhandos
    Oct 26, 2022
    DeXtreme is our new work on scaling sim-to-real for contact-rich manipulation with a vision-based state estimation on a robot hand with the infrastructure we have been developing with Isaac Gym over the past one year. arxiv.org/abs/2210.13702 dextreme.org
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    Jason Liu
    @JasonJZLiu
    May 7, 2025
    Super impressive pipeline!
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    Arthur Allshire
    @arthurallshire
    May 7, 2025
    our new system trains humanoid robots using data from cell phone videos, enabling skills such as climbing stairs and sitting on chairs in a single policy (w/ @redstone_hong @junyi42 @davidrmcall)
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    Jason Liu
    @JasonJZLiu
    Feb 25, 2025
    Replying to @JasonJZLiu
    🥊 Naively adding force to policy learning does not guarantee performance improvement. BC policies often overfit to vision input and ignore force when added naively, limiting performance in contact-rich tasks. (3/N)
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    Jason Liu
    @JasonJZLiu
    Feb 25, 2025
    Replying to @JasonJZLiu
    🦾Our teleop system (~$1K per leader arm) lets users intuitively feel forces experienced by robots, without additional sensor hardware. This can be done for many arms. We also integrate gravity comp, redundancy resolution, etc. in the teleop leader arm, augmenting the teleop
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    Jason Liu
    @JasonJZLiu
    Feb 25, 2025
    Replying to @JasonJZLiu
    🥊 We propose FACTR, a curriculum that corrupts vision with decreasing intensity during training. This prevents overfitting to vision and guides the policy to properly attend to force. (4/N)
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    Jason Liu
    @JasonJZLiu
    Feb 25, 2025
    Replying to @JasonJZLiu
    🥊 By attending to force, FACTR policies also exhibit emergent recovery behavior (not in training data), even for unseen objects. We do not observe this in baseline policies. (7/N)
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    Jason Liu
    @JasonJZLiu
    Feb 25, 2025
    Replying to @JasonJZLiu
    Both our teleop system and autonomous policies significantly outperform baselines. FACTR is easy to set up on existing systems. All components will be open-sourced soon! w/ @yulongli42 @kenny__shaw @_tonytao_ @rsalakhu @pathak2206 (8/N)
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    Jason Liu
    @JasonJZLiu
    Feb 25, 2025
    Replying to @JasonJZLiu
    🥊 We visualize cross attention of action tokens to force (blue) and vision (orange) tokens. [Left] Without FACTR, policy does not pay much attention to force. [Right] FACTR policies properly attend to force, even learning mode-switches, indicated by force attention outweighing
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    Jason Liu
    @JasonJZLiu
    Feb 25, 2025
    Replying to @JasonJZLiu
    🥊 FACTR policies generalize to unseen objects significantly better than baseline policies (vision+force without FACTR). (5/N)
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    Jason Liu
    @JasonJZLiu
    Apr 1, 2025
    Replying to @JasonJZLiu
    Ok why is my post filled with bot likes?
    731

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