Large Scale Deep Learning for Robotically Gathered Imagery for Science - Robotics Institute Carnegie Mellon University

Large Scale Deep Learning for Robotically Gathered Imagery for Science

Katherine Skinner, Jie Li, and M. Johnson-Roberson
Conference Paper, Proceedings of American Geophysical Union Fall Meeting Abstracts, December, 2016

Abstract

With the explosion of computing power, the intelligence and capability of mobile robotics has dramatically increased over the last two decades. Today, we can deploy autonomous robots to achieve observations in a variety of environments ripe for scientific exploration. These platforms are capable of gathering a volume of data previously unimaginable. Additionally, optical cameras, driven by mobile phones and consumer photography, have rapidly improved in size, power consumption, and quality making their deployment cheaper and easier. Finally, in parallel we have seen the rise of large-scale machine learning approaches, particularly deep neural networks (DNNs), increasing the quality of the semantic understanding that can be automatically extracted from optical imagery. In concert this enables new science using a combination of machine learning and robotics. This work will discuss the application of new low-cost high-performance computing approaches and the associated software frameworks to enable scientists to rapidly extract useful science data from millions of robotically gathered images. The automated analysis of imagery on this scale opens up new avenues of inquiry unavailable using more traditional manual or semi-automated approaches. We will use a large archive of millions of benthic images gathered with an autonomous underwater vehicle to demonstrate how these tools enable new scientific questions to be posed.

BibTeX

@conference{Skinner-2016-130170,
author = {Katherine Skinner and Jie Li and M. Johnson-Roberson},
title = {Large Scale Deep Learning for Robotically Gathered Imagery for Science},
booktitle = {Proceedings of American Geophysical Union Fall Meeting Abstracts},
year = {2016},
month = {December},
}