PhD Thesis Proposal
PhD Student
Robotics Institute,
Carnegie Mellon University

On Sample-Efficient Reinforcement Learning for Nuclear Fusion

NSH 4305

Abstract: In many practical applications of reinforcement learning (RL), it is expensive to observe state transitions from the environment. For example, in the problem of plasma control for nuclear fusion, determining the next state for a given state-action pair requires querying an expensive transition function which can lead to many hours of computer simulation or [...]

PhD Thesis Proposal
Robotics Institute,
Carnegie Mellon University

Towards reconstructing non-rigidity from single camera

Abstract: In this proposal, we study how to infer 3D from images captured by a single camera, without assuming the target scenes / objects being static. The non-static setting makes our problem ill-posed and challenging to solve, but is vital in practical applications where target-of-interest is non-static. To solve ill-posed problems, the current trend in [...]

PhD Thesis Proposal
PhD Student
Robotics Institute,
Carnegie Mellon University

Efficient 3D Representations: Algebraic Surfaces for Differentiable Rendering

NSH 4305

Abstract: In this proposal, we show how some classic computer vision tasks can robustly be solved via optimization techniques by using an object representation that is compact and interpretable. Specifically, we explore the applications and benefits of representing 3D objects with an analytical, algebraic function by building an approximate, ray-based differentiable renderer. Our approximate formulation [...]

PhD Thesis Proposal
PhD Student
Robotics Institute,
Carnegie Mellon University

Continual Robot Learning: Benchmarks and Modular Methods

Zoom Meeting Passcode: 841755 Abstract: The earliest reinforcement learning models were designed to learn one task, specified up-front. However, an agent operating freely in the real world will not in general be granted this luxury, as the demands placed on the agent may change as environments or goals change. We refer to this ever-shifting scenario [...]

PhD Thesis Proposal
PhD Student
Robotics Institute,
Carnegie Mellon University

Improving Robotic Exploration with Self-Supervision and Diverse Data

NSH 3305

Abstract: Reinforcement learning (RL) holds great promise for improving robotics, as it allows systems to move beyond passive learning and interact with the world while learning from these interactions. A key aspect of this interaction is exploration: which actions should an RL agent take to best learn about the world? Prior work on exploration is typically [...]

PhD Thesis Proposal
PhD Student
Robotics Institute,
Carnegie Mellon University

Combining Offline Reinforcement Learning with Stochastic Multi-Agent Planning for Autonomous Driving

GHC 4405

Abstract: Fully autonomous vehicles have the potential to greatly reduce vehicular accidents and revolutionize how people travel and how we transport goods. Many of the major challenges for autonomous driving systems emerge from the numerous traffic situations that require complex interactions with other agents. For the foreseeable future, autonomous vehicles will have to share the [...]

PhD Thesis Proposal
PhD Student
Robotics Institute,
Carnegie Mellon University

Causal Robot Learning for Manipulation

Abstract: Two decades into the third age of AI, the rise of deep learning has yielded two seemingly disparate realities. In one, massive accomplishments have been achieved in deep reinforcement learning, protein folding, and large language models. Yet, in the other, the promises of deep learning to empower robots that operate robustly in real-world environments [...]

PhD Thesis Proposal
PhD Student
Robotics Institute,
Carnegie Mellon University

Dense Reconstruction of Dynamic Structures from Monocular RGB Videos

NSH 4305

Abstract: We study the problem of 3D reconstruction of {\em generic} and {\em deformable} objects and scenes from {\em casually-taken} RGB videos, to create a system for capturing the dynamic 3D world. Being able to reconstruct dynamic structures from casual videos allows one to create avatars and motion references for arbitrary objects without specialized devices, [...]

PhD Thesis Proposal
PhD Student
Robotics Institute,
Carnegie Mellon University

Learning via Visual-Tactile Interaction

NSH 3305

Abstract: Humans learn by interacting with their surroundings using all of their senses. The first of these senses to develop is touch, and it is the first way that young humans explore their environment, learn about objects, and tune their cost functions (via pain or treats). Yet, robots are often denied this highly informative and [...]

PhD Thesis Proposal
PhD Student
Robotics Institute,
Carnegie Mellon University

Tactile SLAM: perception for dexterity via vision-based touch

NSH 3002

Abstract: Touch provides a direct window into robot-object interaction, free from occlusion and aliasing faced by visual sensing. Collated tactile perception can facilitate contact-rich tasks---like in-hand manipulation, sliding, and grasping. Here, online estimates of object geometry and pose are crucial for downstream planning and control. With significant advances in tactile sensing, like vision-based touch, a [...]