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thông tin chi tiết - Robotics Manipulation - # Contact-Rich Manipulation Task Generation

Generating Robot Policy Code for High-Precision and Contact-Rich Manipulation Tasks Using Large Language Models


Khái niệm cốt lõi
Large Language Models (LLMs) can successfully generate robot policy code for a variety of high-precision, contact-rich manipulation tasks by parameterizing the action space to include compliance with constraints on interaction forces and stiffnesses.
Tóm tắt

The paper presents GenCHiP, a system that leverages Large Language Models (LLMs) to generate robot policy code for high-precision, contact-rich manipulation tasks. The key insights are:

  1. By exposing an action space that parameterizes compliance with constraints on interaction forces and stiffnesses, LLMs can successfully generate policies for a variety of contact-rich tasks, including peg insertion, cable routing, and connector insertion.

  2. Compared to a baseline that uses a point-to-point action space, GenCHiP improves success rates on subtasks from the Functional Manipulation Benchmark (FMB) and NIST Task Boards by 3x and 4x respectively.

  3. The paper demonstrates that LLMs, without any specialized training, can leverage their world knowledge about object geometry and contact forces to reason about and compose the necessary motion patterns for high-precision manipulation.

  4. Prompting strategies that provide task descriptions, API documentation, and example code are crucial for guiding the LLM towards generating relevant and executable policy code.

The paper validates the approach on a range of contact-rich manipulation tasks, including peg insertion with different geometries, cable routing and unrouting, and waterproof connector insertion. The results show that GenCHiP significantly outperforms baselines that do not expose the compliance action space to the LLM.

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Thống kê
"move(translation=[0.01, 0.0, 0.0], constraint='force.x < 3')" "move(translation=[0.0, -0.01, 0.0], constraint='force.y > -3')" "move(translation=[0.0, 0.0, -0.01], constraint='force.z > -5')" "move(rotation=[0,0,math.pi/4], constraint='z.force>2')" "move(rotation=[0,0,-math.pi/4], constraint='z.force>2')" "move(translation=[1,0,0], constraint='z.force<3')" "move(translation=[-1,0,0], constraint='z.force<3')"
Trích dẫn
"By allowing LLMs to place constraints on robot impedances and interaction forces, GenCHiP improves success rates on subtasks derived from the Functional Manipulation Benchmark (FMB) and NIST Task Boards by 3x and 4x, respectively, when compared to code generation approaches that don't allow for compliance."

Thông tin chi tiết chính được chắt lọc từ

by Kaylee Burns... lúc arxiv.org 04-11-2024

https://arxiv.org/pdf/2404.06645.pdf
GenCHiP

Yêu cầu sâu hơn

How can the GenCHiP approach be extended to handle more complex contact-rich tasks, such as deformable object manipulation or multi-step assembly sequences?

GenCHiP can be extended to handle more complex contact-rich tasks by incorporating additional features and capabilities into the action space and prompting strategies. For deformable object manipulation, the compliance parameters can be further refined to account for the varying stiffness and deformability of objects. This can involve adapting the impedance control parameters dynamically based on the properties of the deformable objects being manipulated. Additionally, introducing constraints related to object deformation and contact forces can enhance the model's ability to interact with and manipulate deformable objects effectively. For multi-step assembly sequences, GenCHiP can be extended to support sequential actions and dependencies between different steps in the assembly process. By allowing the language model to generate code for a series of coordinated actions, the system can handle complex assembly tasks that require precise sequencing and coordination. Prompting strategies can be enhanced to provide context and guidance for the model to generate coherent and effective multi-step assembly sequences.

What are the limitations of the current approach, and how could it be improved to handle a wider range of real-world robotic manipulation scenarios?

One limitation of the current approach is the reliance on predefined compliance parameters and force constraints, which may not be optimal for all manipulation scenarios. To improve the system's adaptability to a wider range of real-world scenarios, the compliance parameters can be made adaptive and trainable, allowing the model to learn and adjust these parameters based on the specific task requirements and environmental conditions. This adaptive approach can enhance the system's flexibility and performance across diverse manipulation tasks. Furthermore, the current approach may lack robustness in handling uncertainties and variations in the environment, such as sensor noise or object pose estimation errors. Introducing robustness mechanisms, such as error handling strategies and adaptive control policies, can improve the system's resilience to uncertainties and enhance its performance in real-world settings. Additionally, incorporating feedback mechanisms that enable the system to learn from its interactions and refine its policies over time can further enhance its capabilities and adaptability.

Given the demonstrated ability of LLMs to reason about object geometry and contact forces, how could this capability be leveraged to enable zero-shot transfer of manipulation skills to novel objects and environments?

The capability of LLMs to reason about object geometry and contact forces can be leveraged to enable zero-shot transfer of manipulation skills to novel objects and environments through a few key strategies: Semantic Understanding: By training the language model on a diverse set of object geometries and manipulation tasks, the model can develop a semantic understanding of how different objects interact and the forces involved in manipulation. This semantic understanding allows the model to generalize its knowledge to novel objects without explicit training. Transfer Learning: Leveraging transfer learning techniques, the model can transfer its learned knowledge about object geometry and contact forces from known tasks to new tasks. By fine-tuning the model on a small set of examples or prompts related to the novel objects, the model can adapt its existing knowledge to the new context. Simulation and Virtual Environments: Using simulation and virtual environments, the model can explore and interact with a wide range of objects and scenarios to further enhance its understanding of object manipulation. By training and testing the model in simulated environments, it can learn to generalize its manipulation skills to novel objects and environments more effectively. By combining these strategies and continuously improving the model's training data and prompts, LLMs can become proficient in zero-shot transfer of manipulation skills to diverse and unseen objects and environments.
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