Abstract
The chapter continues our investigation of the problem investigations of advanced technology precursors from the point of view of the formation of intelligent transportation systems. The problem statement corresponds to an initiative focused on a comprehensive discussion of geosocial networking formation issues and assessment of the quality of intelligent data processing based on conceptual models of integration advanced technology of computer vision and location-based social networks. In this regard, interdisciplinary research and development of modifiable vehicles include the need to solved particular tasks of the system integration, optimization modeling, and control. Based on investigation of geosocial networking using data envelopment analysis, our discussion is directly aimed at the implementation of effective commons-based peer production of the geosocial networking in the progressive movement of pervasive informatics. This provides by creating the original tools of data envelopment analysis for search, collection, storage, and processing of pertinent information resources in modern conditions of rapid development of artificial neural networks, cognitive and other intelligent data processing technologies, in particular together object-based image analysis. The chapter provides the opportunities of intelligent data processing in object-based image analysis for location-based social networks. Proposed hybrid optimization modeling framework and experimental studies scenarios are discussed.
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Acknowledgements
This work was partially supported by the Russian Science Foundation, project No. 17-11-01353 (DEA-based optimization modeling framework). Partially financial support from the RFBR according to the research projects No. 16-29-04326 (integration and investigation of pertinent information resources) is also gratefully acknowledged. This research was partially supported by the Presidium of the RAS, Program No. 30 “Theory and Technologies of Multi-level Decentralized Group Control under Confrontation and Cooperation” (experimental studies of intelligent data and metadata processing in geosocial networking for ITS).
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Rozhnov, A.V., Lychev, A.V., Lobanov, I.A. (2020). Hybrid Optimization Modeling Framework for Research Activities in Intelligent Data Processing. In: Favorskaya, M., Jain, L. (eds) Computer Vision in Control Systems—6. Intelligent Systems Reference Library, vol 182. Springer, Cham. https://doi.org/10.1007/978-3-030-39177-5_11
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