Title
Driverseat: Crowdstrapping Learning Tasks for Autonomous Driving
Abstract
While emerging deep-learning systems have outclassed knowledge-based approaches in many tasks, their application to detection tasks for autonomous technologies remains an open field for scientific exploration. Broadly, there are two major developmental bottlenecks: the unavailability of comprehensively labeled datasets and of expressive evaluation strategies. Approaches for labeling datasets have relied on intensive hand-engineering, and strategies for evaluating learning systems have been unable to identify failure-case scenarios. Human intelligence offers an untapped approach for breaking through these bottlenecks. This paper introduces Driverseat, a technology for embedding crowds around learning systems for autonomous driving. Driverseat utilizes crowd contributions for (a) collecting complex 3D labels and (b) tagging diverse scenarios for ready evaluation of learning systems. We demonstrate how Driverseat can crowdstrap a convolutional neural network on the lane-detection task. More generally, crowdstrapping introduces a valuable paradigm for any technology that can benefit from leveraging the powerful combination of human and computer intelligence.
Year
Venue
Field
2015
CoRR
Crowds,Embedding,Computational intelligence,Convolutional neural network,Human intelligence,Computer science,Human–computer interaction,Unavailability
DocType
Volume
Citations 
Journal
abs/1512.01872
2
PageRank 
References 
Authors
0.35
18
7
Name
Order
Citations
PageRank
Pranav Rajpurkar155524.99
toki migimatsu220.35
Jeff Kiske3462.24
Royce Cheng-Yue4462.24
Sameep Tandon5161.01
Tao Wang6462.24
Andrew Y. Ng7260651987.54