From Abstraction to Reality: DARPA's Vision for Robust Sim-to-Real Autonomy
- URL: http://arxiv.org/abs/2503.11007v1
- Date: Fri, 14 Mar 2025 02:06:10 GMT
- Title: From Abstraction to Reality: DARPA's Vision for Robust Sim-to-Real Autonomy
- Authors: Erfaun Noorani, Zachary Serlin, Ben Price, Alvaro Velasquez,
- Abstract summary: TIAMAT aims to address rapid and robust transfer of autonomy technologies across dynamic and complex environments.<n>Current methods for simulation-to-reality (sim-to-real) transfer often rely on high-fidelity simulations.<n>TIAMAT's approaches aim to achieve abstract-to-real transfer for effective and rapid real-world adaptation.
- Score: 6.402441477393285
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The DARPA Transfer from Imprecise and Abstract Models to Autonomous Technologies (TIAMAT) program aims to address rapid and robust transfer of autonomy technologies across dynamic and complex environments, goals, and platforms. Existing methods for simulation-to-reality (sim-to-real) transfer often rely on high-fidelity simulations and struggle with broad adaptation, particularly in time-sensitive scenarios. Although many approaches have shown incredible performance at specific tasks, most techniques fall short when posed with unforeseen, complex, and dynamic real-world scenarios due to the inherent limitations of simulation. In contrast to current research that aims to bridge the gap between simulation environments and the real world through increasingly sophisticated simulations and a combination of methods typically assuming a small sim-to-real gap -- such as domain randomization, domain adaptation, imitation learning, meta-learning, policy distillation, and dynamic optimization -- TIAMAT takes a different approach by instead emphasizing transfer and adaptation of the autonomy stack directly to real-world environments by utilizing a breadth of low(er)-fidelity simulations to create broadly effective sim-to-real transfers. By abstractly learning from multiple simulation environments in reference to their shared semantics, TIAMAT's approaches aim to achieve abstract-to-real transfer for effective and rapid real-world adaptation. Furthermore, this program endeavors to improve the overall autonomy pipeline by addressing the inherent challenges in translating simulated behaviors into effective real-world performance.
Related papers
- An Real-Sim-Real (RSR) Loop Framework for Generalizable Robotic Policy Transfer with Differentiable Simulation [13.15220962477623]
This paper introduces a novel Real-Sim-Real loop framework to address the gap between simulation and real-world conditions.<n>A key contribution of our work is the design of an informative cost function that encourages the collection of diverse and representative real-world data.<n>Our approach is implemented on the versatile Mujoco MJX platform, and our framework is compatible with a wide range of robotic systems.
arXiv Detail & Related papers (2025-03-13T07:27:05Z) - Pre-Trained Video Generative Models as World Simulators [59.546627730477454]
We propose Dynamic World Simulation (DWS) to transform pre-trained video generative models into controllable world simulators.<n>To achieve precise alignment between conditioned actions and generated visual changes, we introduce a lightweight, universal action-conditioned module.<n> Experiments demonstrate that DWS can be versatilely applied to both diffusion and autoregressive transformer models.
arXiv Detail & Related papers (2025-02-10T14:49:09Z) - Robotic World Model: A Neural Network Simulator for Robust Policy Optimization in Robotics [50.191655141020505]
We introduce a novel framework for learning world models.<n>By providing a scalable and robust framework, we pave the way for adaptive and efficient robotic systems in real-world applications.
arXiv Detail & Related papers (2025-01-17T10:39:09Z) - LoopSR: Looping Sim-and-Real for Lifelong Policy Adaptation of Legged Robots [20.715834172041763]
We propose a lifelong policy adaptation framework named LoopSR.
It reconstructs the real-world environments back in simulation for further improvement.
By leveraging the continual training, LoopSR achieves superior data efficiency compared with strong baselines.
arXiv Detail & Related papers (2024-09-26T16:02:25Z) - Sim-to-Real Transfer of Deep Reinforcement Learning Agents for Online Coverage Path Planning [15.792914346054502]
We tackle the challenge of sim-to-real transfer of reinforcement learning (RL) agents for coverage path planning ( CPP)
We bridge the sim-to-real gap through a semi-virtual environment, including a real robot and real-time aspects, while utilizing a simulated sensor and obstacles.
We find that a high inference frequency allows first-order Markovian policies to transfer directly from simulation, while higher-order policies can be fine-tuned to further reduce the sim-to-real gap.
arXiv Detail & Related papers (2024-06-07T13:24:19Z) - DrEureka: Language Model Guided Sim-To-Real Transfer [64.14314476811806]
Transferring policies learned in simulation to the real world is a promising strategy for acquiring robot skills at scale.
In this paper, we investigate using Large Language Models (LLMs) to automate and accelerate sim-to-real design.
Our approach is capable of solving novel robot tasks, such as quadruped balancing and walking atop a yoga ball.
arXiv Detail & Related papers (2024-06-04T04:53:05Z) - A Conservative Approach for Few-Shot Transfer in Off-Dynamics Reinforcement Learning [3.1515473193934778]
Off-dynamics Reinforcement Learning seeks to transfer a policy from a source environment to a target environment characterized by distinct yet similar dynamics.
We propose an innovative approach inspired by recent advancements in Imitation Learning and conservative RL algorithms.
arXiv Detail & Related papers (2023-12-24T13:09:08Z) - Generative AI-empowered Simulation for Autonomous Driving in Vehicular
Mixed Reality Metaverses [130.15554653948897]
In vehicular mixed reality (MR) Metaverse, distance between physical and virtual entities can be overcome.
Large-scale traffic and driving simulation via realistic data collection and fusion from the physical world is difficult and costly.
We propose an autonomous driving architecture, where generative AI is leveraged to synthesize unlimited conditioned traffic and driving data in simulations.
arXiv Detail & Related papers (2023-02-16T16:54:10Z) - Provable Sim-to-real Transfer in Continuous Domain with Partial
Observations [39.18274543757048]
Sim-to-real transfer trains RL agents in the simulated environments and then deploys them in the real world.
We show that a popular robust adversarial training algorithm is capable of learning a policy from the simulated environment that is competitive to the optimal policy in the real-world environment.
arXiv Detail & Related papers (2022-10-27T16:37:52Z) - TrafficSim: Learning to Simulate Realistic Multi-Agent Behaviors [74.67698916175614]
We propose TrafficSim, a multi-agent behavior model for realistic traffic simulation.
In particular, we leverage an implicit latent variable model to parameterize a joint actor policy.
We show TrafficSim generates significantly more realistic and diverse traffic scenarios as compared to a diverse set of baselines.
arXiv Detail & Related papers (2021-01-17T00:29:30Z) - Point Cloud Based Reinforcement Learning for Sim-to-Real and Partial
Observability in Visual Navigation [62.22058066456076]
Reinforcement Learning (RL) represents powerful tools to solve complex robotic tasks.
RL does not work directly in the real-world, which is known as the sim-to-real transfer problem.
We propose a method that learns on an observation space constructed by point clouds and environment randomization.
arXiv Detail & Related papers (2020-07-27T17:46:59Z) - Zero-Shot Reinforcement Learning with Deep Attention Convolutional
Neural Networks [12.282277258055542]
We show that a deep attention convolutional neural network (DACNN) with specific visual sensor configuration performs as well as training on a dataset with high domain and parameter variation at lower computational complexity.
Our new architecture adapts perception with respect to the control objective, resulting in zero-shot learning without pre-training a perception network.
arXiv Detail & Related papers (2020-01-02T19:41:58Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.