PhD Thesis Defense
PhD Student
Robotics Institute,
Carnegie Mellon University

Watch, Practice, Improve: Towards In-the-wild Manipulation

GHC 4405

Abstract: The longstanding dream of many roboticists is to see robots perform diverse tasks in diverse environments. To build such a robot that can operate anywhere, many methods train on robotic interaction data. While these approaches have led to significant advances, they rely on heavily engineered setups or high amounts of supervision, neither of which [...]

PhD Thesis Defense
Extern
Robotics Institute,
Carnegie Mellon University

Improving the Transparency of Agent Decision Making to Humans Using Demonstrations

GHC 4405

Abstract: For intelligent agents (e.g. robots) to be seamlessly integrated into human society, humans must be able to understand their decision making. For example, the decision making of autonomous cars must be clear to the engineers certifying their safety, passengers riding them, and nearby drivers negotiating the road simultaneously. As an agent's decision making depends [...]

PhD Thesis Defense
PhD Student
Robotics Institute,
Carnegie Mellon University

Perception amidst interaction: spatial AI with vision and touch for robot manipulation

GHC 6501

Abstract: Robots currently lack the cognition to replicate even a fraction of the tasks humans do, a trend summarized by Moravec's Paradox. Humans effortlessly combine their senses for everyday interactions—we can rummage through our pockets in search of our keys, and deftly insert them to unlock our front door. Before robots can demonstrate such dexterity, [...]

PhD Thesis Defense
PhD Student
Robotics Institute,
Carnegie Mellon University

Sparse-view 3D in the Wild

NSH 3305

Abstract: Reconstructing 3D scenes and objects from images alone has been a long-standing goal in computer vision. We have seen tremendous progress in recent years, capable of producing near photo-realistic renderings from any viewpoint. However, existing approaches generally rely on a large number of input images (typically 50-100) to compute camera poses and ensure view [...]

PhD Thesis Defense
PhD Student
Robotics Institute,
Carnegie Mellon University

Offline Learning for Stochastic Multi-Agent Planning in 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 Defense
Extern
Robotics Institute,
Carnegie Mellon University

Improving Robot Capabilities Through Reconfigurability

GHC 6501

Abstract: Advancements in robot capabilities are often achieved through integrating more hardware components. These hardware additions often lead to systems with high power consumption, fragility, and difficulties in control and maintenance. However, is this approach the only path to enhancing robot functionality? In this talk, I introduce the PuzzleBots, a modular multi-robot system with passive [...]

PhD Thesis Defense
Principal Research Programmer / Analyst
Robotics Institute,
Carnegie Mellon University

Spectral Mapping using Simple Sensors

NSH 3002

Abstract: Spectral mapping holds significant importance in many exploration endeavors as it facilitates a deeper comprehension of material composition within a surveyed area. While imaging spectrometers excel in recording reflectance spectra into spectral maps, their large physical footprint, substantial power requirements, and operational intricacies render them unsuitable for integration into small rovers or resource-constrained missions. [...]

PhD Thesis Defense
PhD Student
Robotics Institute,
Carnegie Mellon University

Causal Robot Learning for Manipulation

NSH 1305

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 Defense
PhD Student
Robotics Institute,
Carnegie Mellon University

Learning to Manipulate Using Diverse Datasets

NSH 4305

Abstract: Autonomous agents can play games (like Chess, Go, and even Starcraft), they can help make complex scientific predictions (e.g., protein folding), and they can even write entire computer programs, with just a bit of prompting. However, even the most basic physical manipulation skills, like unlocking and opening a door, still remain literally out-of-reach. The [...]

PhD Thesis Defense
PhD Student
Robotics Institute,
Carnegie Mellon University

Plan to Learn: Active Robot Learning by Planning

NSH 4305

Abstract: Robots need a diverse repertoire of capable motor skills to succeed in the open world. Such a skillset cannot be learned or designed purely on human initiative. In this thesis, we advocate for an active continual learning approach that enables robots to take charge of their own learning. The goal of an autonomously learning [...]

PhD Thesis Defense
PhD Student
Robotics Institute,
Carnegie Mellon University

Policy Decomposition

NSH 4305

Abstract: Optimal Control is a popular formulation for designing controllers for dynamic robotic systems. Under the formulation, the desired long-term behavior of the system is encoded via a cost function and the policy, i.e. a mapping from the state of the system to control commands, to achieve the desired behavior are obtained by solving an [...]

PhD Thesis Defense
PhD Student
Robotics Institute,
Carnegie Mellon University

Analysis by Synthesis for Modern Computer Vision

NSH 4305

Abstract: Image denoising, depth completion, scene flow, and dynamic 3D reconstruction are all examples of recovery problems: the estimation of multidimensional signals from corrupted or partial measurements. This thesis examines these problems from the classic analysis-by-synthesis perspective, where a signal model is used to propose hypotheses, which are then compared to observations. This paradigm has [...]

PhD Thesis Defense
PhD Student
Robotics Institute,
Carnegie Mellon University

A Modularized Approach to Vision-based Tactile Sensor Design Using Physics-based Rendering

NSH 4305

Abstract: Touch is an essential sensing modality for making autonomous robots more dexterous and allowing them to work collaboratively with humans. In particular, the advent of vision-based tactile sensors has resulted in efforts to design them for different robotic manipulation tasks. However, this design task remains a challenging problem. This is for two reasons: first, [...]

PhD Thesis Defense
PhD Student
Robotics Institute,
Carnegie Mellon University

Interleaving Discrete Search and Continuous Optimization for Kinodynamic Motion Planning

NSH 4305

Abstract: Motion planning for dynamically complex robotic tasks requires explicit reasoning within constraints on velocity, acceleration, force/torque, and kinematics such as avoiding obstacles. To meet these constraints, planning algorithms must simultaneously make high-level discrete decisions and low-level continuous decisions. For example, pushing a heavy object involves making discrete decisions about contact locations and continuous decisions [...]

PhD Thesis Defense
PhD Student
Robotics Institute,
Carnegie Mellon University

Goal-Expressive Movement for Social Navigation: Where and When to Behave Legibly

NSH 3305

Abstract: Robots often need to communicate their navigation goals to assist observers in anticipating the robot's future actions. Enabling observers to infer where a robot is going from its movements is particularly important as robots begin to share workplaces, sidewalks, and social spaces with humans. We can use legible motion, or movements that use intentional [...]

PhD Thesis Defense
PhD Student
Robotics Institute,
Carnegie Mellon University

Eye Gaze for Intelligent Driving

NSH 4305

Abstract:  Intelligent vehicles have been proposed as one path to increasing traffic safety and reducing on-road crashes. Driving “intelligence” today takes many forms, ranging from simple blind spot occupancy or forward collision warnings to distance-aware cruise and all the way to full driving autonomy in certain situations. Primarily, these methods are outward-facing and operate on [...]

PhD Thesis Defense
PhD Student
Robotics Institute,
Carnegie Mellon University

Learning to Perceive and Predict Everyday Interactions

NSH 1305

Abstract:  This thesis aims to build computer systems to understand everyday hand-object interactions in the physical world – both perceiving ongoing interactions in 3D space and predicting possible interactions. This ability is crucial for applications such as virtual reality, robotic manipulations, and augmented reality. The problem is inherently ill-posed due to the challenges of one-to-many [...]

PhD Thesis Defense
PhD Student
Robotics Institute,
Carnegie Mellon University

Deep Learning for Tactile Sensing: Development to Deployment

NSH 1305

Abstract: The role of sensing is widely acknowledged for robots interacting with the physical environment. However, few contemporary sensors have gained widespread use among roboticists. This thesis proposes a framework for incorporating sensors into a robot learning paradigm, from development to deployment, through the lens of ReSkin -- a versatile and scalable magnetic tactile sensor. [...]

PhD Thesis Defense
PhD Student
Robotics Institute,
Carnegie Mellon University

Learning and Translating Temporal Abstractions of Behaviour across Humans and Robots

NSH 4305

Abstract: Humans are remarkably adept at learning to perform tasks by imitating other people demonstrating these tasks. Key to this is our ability to reason abstractly about the high-level strategy of the task at hand (such as the recipe of cooking a dish) and the behaviours needed to solve this task (such as the behaviour [...]

PhD Thesis Defense
Extern
Robotics Institute,
Carnegie Mellon University

Assistive value alignment using in-situ naturalistic human behaviors

NSH 3305

Abstract: As collaborative robots are increasingly deployed in personal environments, such as the home, it is critical they take actions to complete tasks consistent with personal preferences. Determining personal preferences for completing household chores, however, is challenging. Many household chores, such as setting a table or loading a dishwasher, are sequential and open-vocabulary, creating a [...]

PhD Thesis Defense
PhD Student
Robotics Institute,
Carnegie Mellon University

Exploration for Continually Improving Robots

NSH 4305

Abstract: Data-driven learning is a powerful paradigm for enabling robots to learn skills. Current prominent approaches involve collecting large datasets of robot behavior via teleoperation or simulation, to then train policies. For these policies to generalize to diverse tasks and scenes, there is a large burden placed on constructing a rich initial dataset, which is [...]

PhD Thesis Defense
PhD Student
Robotics Institute,
Carnegie Mellon University

Domesticating Soft Robotics Research and Development with Accessible Biomaterials

Abstract:   Current trends in robotics design and engineering are typically focused on high value applications where high performance, precision, and robustness take precedence over cost, accessibility, and environmental impact.  In this paradigm, the capability landscape of robotics is largely shaped by access to capital and the promise of economic return. This thesis explores an alternative [...]

PhD Thesis Defense
PhD Student
Robotics Institute,
Carnegie Mellon University

Moving Lights and Cameras for Better 3D Perception of Indoor Scenes

GHC 6501

Abstract: Decades of research on computer vision have highlighted the importance of active sensing -- where an agent controls the parameters of the sensors to improve perception. Research on active perception in the context of robotic manipulation has demonstrated many novel and robust sensing strategies involving a multitude of sensors like RGB and RGBD cameras [...]

PhD Thesis Defense
PhD Student
Robotics Institute,
Carnegie Mellon University

Trustworthy Learning using Uncertain Interpretation of Data

GHC 6501

Abstract: Motivated by the potential of Artificial Intelligence (AI) in high-cost and safety-critical applications, and recently also by the increasing presence of AI in our everyday lives, Trustworthy AI has grown in prominence as a broad area of research encompassing topics such as interpretability, robustness, verifiable safety, fairness, privacy, accountability, and more. This has created [...]

PhD Thesis Defense
PhD Student
Robotics Institute,
Carnegie Mellon University

Whisker-Inspired Sensors for Unstructured Environments

NSH 4305

Abstract: Robots lack the perception abilities of animals, which is one reason they can not achieve complex control in outdoor unstructured environments with the same ease as animals. One cause of the perception gap is the constraints researchers place on the environments in which they test new sensors so algorithms can correctly interpret data from [...]

PhD Thesis Defense
PhD Student
Robotics Institute,
Carnegie Mellon University

Differentiable Convex Modeling for Robotic Planning and Control

NSH 4305

Abstract: Robotic simulation, planning, estimation, and control, have all been built on top of numerical optimization. In this same time, modern convex optimization has matured into a robust technology delivering globally optimal solutions in polynomial time. With advances in differentiable optimization and custom solvers capable of producing smooth derivatives, convex modeling has become fast, reliable, [...]

PhD Thesis Defense
PhD Student
Robotics Institute,
Carnegie Mellon University

Towards a Universal Data Engine for Robotics and Beyond

GHC 4405

Abstract: Robotics researchers have been attempting to extend data-driven breakthroughs in fields like computer vision and language processing into robot learning. However, unlike vision or language domains where massive amounts of data is readily available on the internet, training robotic policies relies on physical and interactive data collected via interacting with the physical world -- [...]