Title
Video Labeling for Automatic Video Surveillance in Security Domains.
Abstract
Beyond traditional security methods, unmanned aerial vehicles (UAVs) have become an important surveillance tool used in security domains to collect the required annotated data. However, collecting annotated data from videos taken by UAVs efficiently, and using these data to build datasets that can be used for learning payoffs or adversary behaviors in game-theoretic approaches and security applications, is an under-explored research question. This paper presents VIOLA, a novel labeling application that includes (i) a workload distribution framework to efficiently gather human labels from videos in a secured manner; (ii) a software interface with features designed for labeling videos taken by UAVs in the domain of wildlife security. We also present the evolution of VIOLA and analyze how the changes made in the development process relate to the efficiency of labeling, including when seemingly obvious improvements did not lead to increased efficiency. VIOLA enables collecting massive amounts of data with detailed information from challenging security videos such as those collected aboard UAVs for wildlife security. VIOLA will lead to the development of new approaches that integrate deep learning for real-time detection and response.
Year
Venue
Field
2017
arXiv: Computers and Society
Research question,Computer security,Workload,Computer science,Software,Artificial intelligence,Deep learning,Adversary
DocType
Volume
Citations 
Journal
abs/1710.08526
0
PageRank 
References 
Authors
0.34
17
8
Name
Order
Citations
PageRank
Elizabeth Bondi113.07
Debarun Kar2526.99
Venil Loyd Noronha311.71
Donnabell Dmello411.38
Milind Tambe56008522.25
Fei Fang620142.93
Arvind Iyer7244.73
Robert Hannaford810.72