Frequently Asked Questions

What are some references for this type of work, including by members of Silver Bullet Solutions?

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A. Volgenant, Linear and semi-assignment problems: a core oriented approach, Operations Res. 23 (10) (1996) 917–932.

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Air Force Doctrine Publication (AFDP) #-14, “Space Situational Awareness”, Jan 2021

Alan N. Steinberg, Christopher L. Bowman, Franklin E. White, "Revisions to the JDL data fusion model," Proc. SPIE 3719, Sensor Fusion: Architectures, Algorithms, and Applications III, (12 March 1999); https://doi.org/10.1117/12.341367

Amina Adadi and Mohammed Berrada. 2018. Peeking inside the black-box: A survey on Explainable Artificial Intelligence (XAI). IEEE Access (2018).

Arcidiaco, C.S.; An empirical study on synthetic image generation techniques for object detectors; Kth Royal Institute of Technology, Stockholm, Sweden; 2018

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Bar-Shalom, Y., X. Rong Li, Thiagalingam Kirub, Estimation with Applications to Tracking and Navigation, John Wiley and Sons, 2001

Belmar Garcia-Garcia, Thierry Bouwmans, Alberto Jorge Rosales Silva, “Background subtraction in real applications: Challenges, current models and future directions”, Computer Science Review, Volume 35, 2020,https://doi.org/10.1016/j.cosrev.2019.100204.

Blasch, E. P., Lambert, D. A., Valin, P., Kokar, M. M., Llinas, J., Das, S., ... & Shahbazian, E. (2012). High level information fusion (HLIF): Survey of models, issues, and grand challenges. IEEE Aerospace and Electronic Systems Magazine, 27(9), 4-20

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C. Y. Chong, and S. Mori; “Metrics for Feature-Aided Track Association”; Proc. 9th International Conference on Information Fusion, Florence Italy, July 2006

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Chen, Y.; Jiao, Y.; Wu, M.; Ma, H.; Lu, Z. Group Target Tracking for Highly Maneuverable Unmanned Aerial Vehicles Swarms: A Perspective. Sensors 2023, 23, 4465. https://doi.org/10.3390/s23094465

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David Lee Hall; Mathematical Techniques in Multisensor Data Fusion; Artech House; 2004

David Zuehlke and Daniel Posada and Madhur Tiwari and Troy Henders (2022).  “Autonomous Satellite Detection and Tracking using Optical Flow”, https://doi.org/10.48550/arXiv.2204.0702

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Gómez-Romero, J., García, J., Kandefer, M., Llinas, J., Molina, J. M., Patricio, M. A., ... & Shapiro, S. C. (2010, July). Strategies and techniques for use and exploitation of contextual information in high-level fusion architectures. In 2010 13th International Conference on Information Fusion (pp. 1-8). IEEE.

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Gross, G., Nagi, R. and Sambhoos, K. "Continuous Preservation of Situational Awareness through Incremental/Stochastic Graphical Methods," 14th International Conference on Information Fusion, Chicago, IL, 26-29 July 2011.

Gross, G., Nagi, R. and Sambhoos, K. "Soft Information, Dirty Graphs and Uncertainty Representation/Processing for Situation Understanding," 13th International Conference on Information Fusion, Edinburgh, Scotland, 26-29 July 2010.

Gross, G.A. and Nagi, R. "Precedence Tree Guided Search for the Efficient Identification of Multiple Situations of Interest – AND/OR Graph Matching," Information Fusion, January 2016, Vol. 27, pp. 240-254.

Gross, G.A., Nagi, R. and Sambhoos, K. "A Fuzzy Graph Matching Approach in Intelligence Analysis and Maintenance of Continuous Situational Awareness," Information Fusion, July 2014, Vol. 18, pp. 43-61.

Guha, D., Kingsbury, T., McDaniel, D., Schaefer, G.; “Cyber Ontology (CybOnt) Data Fusion”, National Symposium on Sensor & Data Fusion (NSSDF), 21-24 October 2019 in San Diego, CA.

Guha, D., Kingsbury, T., McDaniel, D., Schaefer, G.; “Cyber Ontology (CybOnt) Data Fusion” for the National Symposium on Sensor & Data Fusion (NSSDF) 21-24 October 2019 in San Diego, CA. 

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