David Isele
University of Pennsylvania
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Publication
Featured researches published by David Isele.
intelligent robots and systems | 2016
David Isele; José-Marcio Luna; Eric Eaton; Gabriel Victor de la Cruz; James Irwin; Brandon Kallaher; Matthew E. Taylor
No two robots are exactly the same-even for a given model of robot, different units will require slightly different controllers. Furthermore, because robots change and degrade over time, a controller will need to change over time to remain optimal. This paper leverages lifelong learning in order to learn controllers for different robots. In particular, we show that by learning a set of control policies over robots with different (unknown) motion models, we can quickly adapt to changes in the robot, or learn a controller for a new robot with a unique set of disturbances. Furthermore, the approach is completely model-free, allowing us to apply this method to robots that have not, or cannot, be fully modeled.
international symposium on neural networks | 2017
Adam M. Terwilliger; Gabriel N. Perdue; David Isele; Robert M. Patton; Steven R. Young
Deep learning offers new tools to improve our understanding of many important scientific problems. Neutrinos are the most abundant particles in existence and are hypothesized to explain the matter-antimatter asymmetry that dominates our universe. Definitive tests of this conjecture require a detailed understanding of neutrino interactions with a variety of nuclei. Many measurements of interest depend on vertex reconstruction — finding the origin of a neutrino interaction using data from the detector, which can be represented as images. Traditionally, this has been accomplished by utilizing methods that identify the tracks coming from the interaction. However, these methods are not ideal for interactions where an abundance of tracks and cascades occlude the vertex region. Manual algorithm engineering to handle these challenges is complicated and error prone. Deep learning extracts rich, semantic features directly from raw data, making it a promising solution to this problem. In this work, deep learning models are presented that classify the vertex location in regions meaningful to the domain scientists improving their ability to explore more complex interactions.
international joint conference on artificial intelligence | 2016
David Isele; Mohammad Rostami; Eric Eaton
international conference on robotics and automation | 2018
David Isele; Reza Rahimi; Akansel Cosgun; Kaushik Subramanian; Kikuo Fujimura
national conference on artificial intelligence | 2018
David Isele; Akansel Cosgun
national conference on artificial intelligence | 2018
Rey Pocius; David Isele; Mark Roberts; David W. Aha
arXiv: Learning | 2018
Jiachen Yang; Alireza Nakhaei; David Isele; Hongyuan Zha; Kikuo Fujimura
adaptive agents and multi-agents systems | 2018
David Isele; Eric Eaton; Mark Roberts; David W. Aha
national conference on artificial intelligence | 2017
David Isele
arXiv: Learning | 2017
David Isele; Akansel Cosgun; Kikuo Fujimura