RI Seminar
Peter K. Allen
Professor of Computer Science
Department of Computer Science, Columbia University

Multi-Modal Geometric Learning for Grasping

1305 Newell Simon Hall

Abstract:  In this talk, we will describe methods to enable robots to grasp novel objects using multi-modal data and machine.  The starting point is an architecture to enable robotic grasp planning via shape completion using a single occluded depth view of objects.  Shape completion is accomplished through the use of a 3D CNN. The network [...]

PhD Thesis Proposal
Robotics Institute,
Carnegie Mellon University

Machine Imagination: Data-driven User Controllable Visual Content Creation

NSH 3305

Abstract: Humans have the remarkable ability to create visual worlds far beyond what could be seen by human eye, including inferring the state of unobserved, imagining the unknown, and thinking about diverse possibilities about what lies in the future. Machines lack this inquisitive ability despite the current revolution in machine learning and computer vision. We [...]

Staff Events

Robotics Institute Administrative Staff Winter Tree Lunch

Newell-Simon Hall 4201

Please join us for our annual Robotics Institute Administrative Staff Winter Tree Decorating Lunch. A light lunch will be provided but staff-created treats will always be welcomed.

PhD Speaking Qualifier
Robotics Institute,
Carnegie Mellon University

Persistent Multi-Robot Mapping in an Uncertain Environment

GHC 8102

Abstract: We present a system that addresses the challenge of concurrently mapping, scheduling, and deploying a team of energy-constrained robots to persistently cover an unknown and potentially dynamic environment. This system can passively maintain an accurate representation of occupied space, allowing robots reliable access for monitoring, study, or search and rescue. Current state-of-the-art algorithms only [...]

PhD Thesis Defense
Robotics Institute,
Carnegie Mellon University

Learning with Clusters

GHC 8102

Abstract: Clustering, the problem of grouping similar data, has been extensively studied since at least the 1950's. As machine learning becomes more prominent, clustering has evolved from primarily a data analysis tool into an integrated component of complex robotic and machine learning systems, including those involving dimensionality reduction, anomaly detection, network analysis, image segmentation and [...]

PhD Thesis Proposal
Robotics Institute,
Carnegie Mellon University

Spatiotemporal Understanding of People Using Scenes, Objects, and Poses

NSH 1305

Abstract: Humans are arguably one of the most important entities that AI systems would need to understand to be useful and ubiquitous. From autonomous cars observing pedestrians to assistive robots helping the elderly, a large part of this understanding is focused on recognizing human actions, and potentially, their intentions. Humans themselves are quite good at [...]

Faculty Candidate
Systems Scientist
Robotics Institute,
Carnegie Mellon University

Faster, Safer, Smaller: The future of autonomy needs all three

Gates-Hillman Center 8102

Abstract In this talk I will start with state estimation as my PhD work. Very often, state estimation plays a crucial role in a robotic system serving as a building block for autonomy. Challenges are to carry out state estimation in 6-DOF, in real-time at high frequencies, with high precision, robust to aggressive motion and [...]