TY - GEN
T1 - Overview of contextual tracking approaches in information fusion
AU - Blasch, Erik
AU - Herrero, Jesus Garcia
AU - Snidaro, Lauro
AU - Llinas, James
AU - Seetharaman, Guna
AU - Palaniappan, Kannappan
PY - 2013
Y1 - 2013
N2 - Many information fusion solutions work well in the intended scenarios; but the applications, supporting data, and capabilities change over varying contexts. One example is weather data for electro-optical target trackers of which standards have evolved over decades. The operating conditions of: technology changes, sensor/target variations, and the contextual environment can inhibit performance if not included in the initial systems design. In this paper, we seek to define and categorize different types of contextual information. We describe five contextual information categories that support target tracking: (1) domain knowledge from a user to aid the information fusion process through selection, cueing, and analysis, (2) environment-to-hardware processing for sensor management, (3) known distribution of entities for situation/threat assessment, (4) historical traffic behavior for situation awareness patterns of life (POL), and (5) road information for target tracking and identification. Appropriate characterization and representation of contextual information is needed for future high-level information fusion systems design to take advantage of the large data content available for a priori knowledge target tracking algorithm construction, implementation, and application.
AB - Many information fusion solutions work well in the intended scenarios; but the applications, supporting data, and capabilities change over varying contexts. One example is weather data for electro-optical target trackers of which standards have evolved over decades. The operating conditions of: technology changes, sensor/target variations, and the contextual environment can inhibit performance if not included in the initial systems design. In this paper, we seek to define and categorize different types of contextual information. We describe five contextual information categories that support target tracking: (1) domain knowledge from a user to aid the information fusion process through selection, cueing, and analysis, (2) environment-to-hardware processing for sensor management, (3) known distribution of entities for situation/threat assessment, (4) historical traffic behavior for situation awareness patterns of life (POL), and (5) road information for target tracking and identification. Appropriate characterization and representation of contextual information is needed for future high-level information fusion systems design to take advantage of the large data content available for a priori knowledge target tracking algorithm construction, implementation, and application.
KW - Activity-based intelligence
KW - Behavior analysis
KW - Contextual tracking
KW - Group tracking
KW - Information fusion
KW - Patterns of life
KW - Road information
KW - Sensor management
KW - Situation awareness
KW - Traffic behavior
KW - WAMI
UR - https://www.scopus.com/pages/publications/84881125973
U2 - 10.1117/12.2016312
DO - 10.1117/12.2016312
M3 - Conference contribution
AN - SCOPUS:84881125973
SN - 9780819495389
T3 - Proceedings of SPIE - The International Society for Optical Engineering
BT - Geospatial InfoFusion III
T2 - Geospatial InfoFusion III
Y2 - 2 May 2013 through 3 May 2013
ER -