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Requirement Analysis and Optimal Design of an Operational Change Detection Software

  • Lee, Young-Ran (Image Systems Team, Satrec Initiative Co., Ltd.) ;
  • Bang, Ki-In (Telematics Research Division, Electronics and Telecommunications Research Institute) ;
  • Shin, Dong-Seok (Image Systems Team, Satrec Initiative Co., Ltd.) ;
  • Jeong, Soo (Telematics Research Division, Electronics and Telecommunications Research Institute) ;
  • Kim, Kyung-Ok (Telematics Research Division, Electronics and Telecommunications Research Institute)
  • Published : 2004.06.01

Abstract

This paper describes what an operational change detection tool requires and the software which was designed and developed according to the requirements. The top requirement for the application of the software to operational change detection was identified: minimization of false detections, missing detections and operational cost. In order to meet such a requirement, the software was designed with the concept that the ultimate decision and isolation of changes must be performed manually by visual interpretation and all automatic algorithms and/or visualization techniques must be defined as support functions. In addition, the modular structure of the proposed software enables the addition of a new support function with the minimum development cost and minimum change of the operational environment.

Keywords

References

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