PhD Speaking Qualifier
Robotics Institute,
Carnegie Mellon University

Analysis of Deadlock in Multirobot Systems

Abstract: Collision avoidance for multirobot systems is a well-studied problem. Recently, control barrier functions (CBFs) have been proposed for synthesizing controllers that guarantee safety while simultaneously encouraging goal stabilization for multiple robots. However, it has been noted that reactive control synthesis methods (such as CBFs) are prone to deadlock, an equilibrium of system dynamics that [...]

PhD Speaking Qualifier
PhD Student
Robotics Institute,
Carnegie Mellon University

Interleaving Graph Search and Trajectory Optimization for Aggressive Quadrotor Flight

Abstract: Quadrotors can achieve aggressive flight by tracking complex maneuvers and rapidly changing directions. Planning for aggressive flight with trajectory optimization could be incredibly fast, even in higher dimensions, and can account for dynamics of the quadrotor, however, only provides a locally optimal solution. On the other hand, planning with discrete graph search can handle [...]

PhD Speaking Qualifier
PhD Student
Robotics Institute,
Carnegie Mellon University

See, Hear, Explore: Curiosity via Audio-Visual Association

Abstract: Exploration is one of the core challenges in reinforcement learning. A common formulation of curiosity-driven exploration uses the difference between the real future and the future predicted by a learned model. However, predicting the future is an inherently difficult task which can be ill-posed in the face of stochasticity. In this work, we introduce [...]

PhD Thesis Proposal
Robotics Institute,
Carnegie Mellon University

Dynamical Model Learning and Inversion for Aggressive Quadrotor Flight

Quadrotor applications have seen a surge recently and many tasks require precise and accurate controls. Flying fast is critical in many applications and the limited onboard power source makes completing tasks quickly even more important. Staying on a desired course while traveling at high speeds and high accelerations is difficult due to complex and stochastic [...]

PhD Speaking Qualifier
PhD Student
Robotics Institute,
Carnegie Mellon University

MonoClothCap: Towards Temporally Coherent Clothing Capture from Monocular RGB Video

Abstract: We present a method to capture temporally coherent dynamic clothing deformation from a monocular RGB video input. In contrast to the existing literature, our method does not require a pre-scanned personalized mesh template, and thus can be applied to in-the-wild videos. To constrain the output to a valid deformation space, we build statistical deformation [...]

PhD Thesis Defense
Robotics Institute,
Carnegie Mellon University

Robust Manipulation with Active Compliance

Abstract: Human manipulation skills are filled with creative use of physical contacts to move the object about the hand and in the environment. However, it is difficult for robot manipulators to enjoy this dexterity since contacts may cause the manipulation task to fail by introducing huge forces or unexpected change of constraints, especially when modeling [...]

PhD Thesis Defense
Robotics Institute,
Carnegie Mellon University

Open-world Object Detection and Tracking

Abstract: Computer vision today excels at recognizing narrow slices of the real world: our models seem to accurately detect objects like cats, cars, or chairs in benchmark datasets. However, deploying models requires that they work in the open world, which includes arbitrary objects in diverse settings. Current methods struggle on both axes: they recognize only [...]

PhD Speaking Qualifier
PhD Student
Robotics Institute,
Carnegie Mellon University

Policy Decomposition : Approximate Optimal Control with Suboptimality Estimates

Abstract: Owing to the curse of dimensionality, numerically computing global policies to optimal control problems for complex dynamical systems quickly becomes intractable. In consequence, a number of approximation methods have been developed. However, none of the current methods can quantify by how much the resulting control underperforms the elusive globally optimal solution. We propose Policy [...]

PhD Speaking Qualifier
PhD Student
Robotics Institute,
Carnegie Mellon University

Inverse Reinforcement Learning with Explicit Policy Estimates

Abstract: Various methods for solving the inverse reinforcement learning (IRL) problem have been developed independently in machine learning and economics. In particular, the method of Maximum Causal Entropy IRL is based on the perspective of entropy maximization, while related advances in the field of economics instead assume the existence of unobserved action shocks to explain [...]

MSR Speaking Qualifier
Robotics Institute,
Carnegie Mellon University

MSR Thesis Talk – Hans Kumar

Title: Multi-Session Periodic SLAM for Legged Robots   Abstract: Methods for state estimation that rely on visual information are challenging on dynamic robots because of rapid changes in the viewing angle of onboard cameras. In this thesis, we show that by leveraging structure in the way that dynamic robots locomote, we can increase the feasibility [...]