PhD Thesis Defense
Robotics Institute,
Carnegie Mellon University

Dynamical Model Learning and Inversion for Aggressive Quadrotor Flight

Abstract: 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 [...]

PhD Thesis Defense
Robotics Institute,
Carnegie Mellon University

Person Transfers Between Multiple Service Robots

NSH 3305

Abstract: As more service robots are deployed in the world, human-robot interaction will not be limited to one-to-one interactions between users and robots. Instead, users will likely have to interact with multiple robots, simultaneously or sequentially, throughout their day to receive services and complete different tasks. In this thesis, I describe work in which my [...]

PhD Speaking Qualifier
MSR Student
Robotics Institute,
Carnegie Mellon University

A causal framework to diagnose and fix issues with doors

Abstract: Many animals, such as ravens, (and a fortiori humans) exhibit a great deal of physical intelligence that allows them to solve complex multi-step physical puzzles. This ability indicates an understanding or a faculty to represent causality and mechanisms, understand when something goes wrong, and figure out how to deal with it. As a step [...]

PhD Thesis Proposal
Robotics Institute,
Carnegie Mellon University

Understanding Unbalanced Datasets Through Simple Models and Dataset Exploration

GHC 4405

Abstract: Computer vision models have proven to be tremendously capable of recognizing and detecting several classes and objects. They succeed in classes widely ranging in type and scale from humans to cans to pens. However, the best performing classes have abundant examples in large-scale datasets today. In unbalanced datasets, where some categories are seen in [...]

VASC Seminar
Vishal Patel
Associate Professor
Johns Hopkins University

Domain adaptive object detection

Abstract: Recent advances in deep learning have led to the development of accurate and efficient models for object detection. However, learning highly accurate models relies on the availability of large-scale annotated datasets. Due to this, model performance drops drastically when evaluated on label-scarce datasets having visually distinct images.  Domain adaptation tries to mitigate this degradation.  In [...]

PhD Thesis Defense
Robotics Institute,
Carnegie Mellon University

Understanding, Exploiting and Improving Inter-view Relationships

NSH 3305

Abstract: Multi-view machine learning has garnered substantial attention in various applications over recent years. Many such applications involve learning on data obtained from multiple heterogeneous sources of information, for example, in multi-sensor systems such as self-driving cars, or monitoring intensive care patient vital signs at their bed-side. Learning models for such applications can often benefit [...]

RI Event
Project Scientist
Robotics Institute,
Carnegie Mellon University

Model-Centric Verification of Artificial Intelligence

Abstract: This work shows how provable guarantees can be used to supplement probabilistic estimates in the context of Artificial Intelligence (AI) systems. Statistical techniques measure the expected performance of a model, but low error rates say nothing about the ways in which errors manifest. Formal verification of model adherence to design specifications can yield certificates [...]

PhD Speaking Qualifier
PhD Student
Robotics Institute,
Carnegie Mellon University

Designing Whisker Sensors to Detect Multiple Mechanical Stimuli for Robotic Applications

Abstract: Many mammals, such as rats and seals, use their whiskers as versatile mechanical sensors to gain precise information about their surroundings. Whisker-inspired sensors on robotic platforms have shown their potential benefit, improving applications ranging from drone navigation to texture mapping. Despite this, there is a gap between the engineered sensors and many of the [...]

PhD Thesis Defense
Robotics Institute,
Carnegie Mellon University

Human-in-the-loop Control of Mobile Robots

Abstract: Human-in-the-loop control for mobile robots is an important aspect of robot operation, especially for navigation in unstructured environments or in the case of unexpected events. However, traditional paradigms of human-in-the-loop control have relied heavily on the human to provide precise and accurate control inputs to the robot, or reduced the role of the human [...]

VASC Seminar
Umberto Michieli
Postdoctoral Researcher and Adjunct Professor
University of Padua

Visual Understanding across Semantic Groups, Domains and Devices

Abstract: Deep neural networks often lack generalization capabilities to accommodate changes in the input/output domain distributions and, therefore, are inherently limited by the restricted visual and semantic information contained in the original training set. In this talk, we argue the importance of the versatility of deep neural architectures and we explore it from various perspectives.   [...]