Visual Search Models for Multiple Targets and Optimal Stopping Time

다수표적의 시각적 탐색을 위한 탐색능력 모델과 최적 탐색정지 시점

  • Hong, Seung-Kweon (Dept. of ndustrial Engineering, State University of New York) ;
  • Park, Seikwon (Dept. of Industrial Engineering, Korea Air Force Academy) ;
  • Ryu, Seung Wan (Dept. of ndustrial Engineering, State University of New York)
  • 홍승권 (뉴욕주립대학 산업공학과) ;
  • 박세권 (공군사관학교 산업공학과) ;
  • 류승완 (뉴욕주립대학 산업공학과)
  • Published : 2003.06.30

Abstract

Visual search in an unstructured search field is a fruitful research area for computational modeling. Search models that describe relationship between search time and probability of target detection have been used for prediction of human search performance and provision of ideal goals for search training. Until recently, however, most of models were focused on detecting a single target in a search field, although, in practice, a search field includes multiple targets and search models for multiple targets may differ from search models for a single target. This study proposed a random search model for multiple targets, generalizing a random search model for a single target which is the most typical search model. To test this model, human search data were collected and compared with the model. This model well predicted human performance in visual search for multiple targets. This paper also proposed how to determine optimal stopping time in multiple-target search.

Keywords

References

  1. Arani, T., Karwan, M. H., and Drury, C. G. (1984), A Variable Memory Model of Visual Search, Human Factors, 26, 631-639
  2. Baveja, A., Drury, C. G., Karwan, M. H., and Malon, D. (1996), Derivation and Test of an Optimum Overlapping Lobes Model of Visual Search, IEEE Transactions on Systems, Man, Cybernetics, 26(1), 161-168
  3. Boff, K. R., Kaufman, L., and Thomas, 1. P. (1986), Handbook of Perception and Human Performance, John Wiley & Sons, New York
  4. Courtney, A. J. (1986), A Search Performance Test for Visual Lobe Size, IIE Transaction, 18, 56-62
  5. Chun, M. M. and Wolfe, J. M. (1996), Just say no : How are visual searches terminated when there is no target present?, Cognitive Psychology, 30, 39-78
  6. Drury, C. G. and Hong, S-K (2001), Generalizing from Single Target Search to Multiple Target Search, Theoretical Issues in Ergonomics Science (in press)
  7. Drury, C. G. and Sinclare, D, (1983), Human and Machine in an Inspection Task, Human Factors, 25(4), 391-400
  8. Gupta, S. M. and Geyer, L. H. (1981), Visual Search is Systematic, Proceedings of the Human Factors Society-25th Annual Meeting, 639-643
  9. Harris, J. M. (1999), Models of Visual Search Performance, Unpublished Ph. D, Dissertation, Clemson University
  10. Hollands, J. and Wickens, C. D. (1999), Engineering Psychology and Human Performance, Harper Collins Publishers
  11. Hong S-K (2003), Human performance in visual search for multiple targets, Unpublished PhD. dissertation, State University of New York at Buffalo
  12. Hou, T-H., Lin, L., and Drury, C. G. (1993), An Empirical Study of Hybrid Inspection Systems and Allocation of Inspection Functions, The International Journal of Human Factors in Manufacturing, 3(4), 351-367 https://doi.org/10.1002/hfm.4530030404
  13. Karwan, M. H., Morawski, T. B., and Drury, C. G. (1995), Optimum Speed of Visual Inspection using a Systematic Search Strategy, IIE Transactions, 27, 291-299
  14. Kopardkar, P., Mital, A., and Anand, S. (1993), Manual, Hybrid, and Automated Inspection Literature and Current Research, Integrated Manufacturing System, 4(1), 18-29 https://doi.org/10.1108/09576069310023838
  15. Kraiss, K-F. and Knaeuper, A. (1982), Using Visual Lode Area Measurements to Predict Visual Search Performance, Human Factors, 24(6), 673-682
  16. Kundel, H. S. and Lafollette, B. S, (1972), Visual Search Patterns and Experience with Radiological Images, Radiology, 103, 523-528
  17. Lamar, E. S. (1946), Visual Detection, In Koopman, B. O. (ed) Search and Screening, OEG Report 56
  18. Megaw, E. D, (1979), Factors Affecting Visual Inspection Accuracy, Applied Ergonomics, 10(1),27-32 https://doi.org/10.1016/0003-6870(79)90006-1
  19. Megaw, E. D, and Bellamy, L. J. (1979), Eye Movements and Visual Search, In Clare, J. N. and Sinclair, M. A. (eds) Search and Human Observer, Talyor and Francis, London, 65-73
  20. Morawski, T. B., Drury, C. G. and Karwan, M. H. (1980), Predicting Search Performance for Multiple Targets, Human Factors, 22,707-718
  21. Trevidi, K. S. (1982), Probability and Statistics with Reliability, Queuing and Computer Science Applications, Prentic Hall Inc., NJ
  22. Toef, A., Bili, P, and Valeton, J. M. (1999), A Test of Three Search and Detection Models, SPIE Conference on Targets and Backgrounds : Characterization and Representation V, SPIE Vol 3699, 323-334