(2013) automatic detection of biometrics transaction times
DESCRIPTION
Presented at The 8th International Conference on Information Technology and Applications (ICITA 2013), Sydney Australia, July 1 - July 4 2013. The purpose of this paper is to illustrate the automatic detection of biometric transaction times using hand geometry as the modality of interest. Video recordings were segmented into individual frames and processed through a program to automatically detect interactions between the user and the system. Results include a mean enrollment time of 15.860 seconds and a mean verification time of 2.915 seconds.TRANSCRIPT
![Page 1: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/1.jpg)
BIOMETRICS LABBiometric Standards, Performance and Assurance LaboratoryDepartment of Technology, Leadership and Innovation
AUTOMATIC DETECTION OF BIOMETRIC TRANSACTION TIMESMICHAEL BROCKLYSTEPHEN ELLIOTT PH.D.
![Page 2: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/2.jpg)
HAND GEOMETRY
• Measures length, width, and thickness of hand [1]
• Engages 1:1 matching by entering a Personal Identification Number (PIN)
[1]
![Page 3: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/3.jpg)
USES
• Joins a PIN number with the security of biometric verification
• Commonly used in time and attendance and access control
• Hand geometry has proven to be very popular in time and attendance recording [2]
![Page 4: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/4.jpg)
BENEFITS
• Hand geometry functions as a medium cost system with fast computational speeds, low template size, and good ease of use [3]
• The convenience of hand geometry stems from the fact that users cannot lose or forget their biometric credential [4]
![Page 5: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/5.jpg)
TIME ON TASK
• Computational speed is always a primary concern
• Slow throughput times may eliminate the cost savings proposed by device installation
• Higher costs are associated with a higher time to acquire or process a biometric sample [5]
![Page 6: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/6.jpg)
VIDEO CODING
• Previous studies suggest video recording in order to capture subject time on task [6]
• Time consuming process to manually record timing data
• Potential for errors and inconsistencies
![Page 7: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/7.jpg)
INTERRATER RELIABILITY
• Represents the degree to which the ratings of different judges are proportional when expressed as deviations from their means [7]
• Not all video coders will report the same result
![Page 8: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/8.jpg)
OPERATIONAL TIMES
• Previous research has suggested models for biometric transaction times
• Biometric transaction time includes:– Subject interaction time– Biometric subsystem processing time– Biometric subsystem decision time– External control access time
![Page 9: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/9.jpg)
OPERATIONAL TIME MODEL
[8]
![Page 10: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/10.jpg)
BIOMETRICS LABBiometric Standards, Performance and Assurance LaboratoryDepartment of Technology, Leadership and Innovation
EXPERIMENTAL SETUP
![Page 11: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/11.jpg)
DEVICE
• Ingersoll Rand Handkey II
• Hand geometry biometric device
![Page 12: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/12.jpg)
CAMERA
• Logitech HD Pro C910 Webcam– 1080p recording
• Used to video record interaction changes on hand geometry device
![Page 13: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/13.jpg)
SETUP
• Camera placed 24 cm above hand geometry machine
• Device placed 90 cm above ground level
![Page 14: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/14.jpg)
EXPERIMENT
• Hand geometry data was collected as part of a larger multi-modal study
• This data collection included 35 subjects• Other modalities collected include
fingerprint, iris, face, signature, and palm vein
![Page 15: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/15.jpg)
BIOMETRICS LABBiometric Standards, Performance and Assurance LaboratoryDepartment of Technology, Leadership and Innovation
VIDEO ANALYSIS
![Page 16: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/16.jpg)
USES
• An automated tool was created to analyze the videos
• Analyzes videos to 15 frames per second
• Detects light changes on device as pixel color thresholds are crossed
• Writes results without human coder
![Page 17: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/17.jpg)
CROPPING
![Page 18: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/18.jpg)
FRAME SELECTION
![Page 19: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/19.jpg)
LIGHT SELECTION
![Page 20: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/20.jpg)
BIOMETRICS LABBiometric Standards, Performance and Assurance LaboratoryDepartment of Technology, Leadership and Innovation
TRANSACTION TIME USE CASE – HAND GEOMETRY
![Page 21: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/21.jpg)
SYSTEM READY
• System ready
![Page 22: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/22.jpg)
USER MAKES A CLAIM OR PRESENTS AN IDENTITY
• User enters PIN
![Page 23: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/23.jpg)
SAMPLE ACQUISITION
• Lights all on
![Page 24: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/24.jpg)
SAMPLE ACQUISITION
• User places hand
![Page 25: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/25.jpg)
SAMPLE ACQUISITION
• Lights change
![Page 26: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/26.jpg)
SAMPLE ACQUISITION
• Lights continue to change
![Page 27: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/27.jpg)
SAMPLE ACQUISITION
• Lights all off
![Page 28: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/28.jpg)
BIOMETRIC SUBSYSTEM DECISION
• Green or red light
![Page 29: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/29.jpg)
EXTERNAL CONTROL ACTION
• Not used in this study• External control may be opening door or
granting access to system
![Page 30: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/30.jpg)
COMBINATION OF MODELS
![Page 31: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/31.jpg)
BIOMETRICS LABBiometric Standards, Performance and Assurance LaboratoryDepartment of Technology, Leadership and Innovation
TERMINOLOGY
![Page 32: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/32.jpg)
CONFLICTING TERMINOLOGY
• Along with the model, we include specific terminology and emphasize the linkages between the two versions
![Page 33: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/33.jpg)
TRANSACTION
• The sequence of attempts to the system on the part of the user for the purpose of enrollment, verification or identification
• This definition follows ISO/IEC FCD 19795-1’s definition of a transaction
![Page 34: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/34.jpg)
ATTEMPT
• The submission of one (or a sequence of) biometric samples to the system on the part of the user– One or more attempts as allowed by the
biometric system will create one transaction
• This definition follows ISO/IEC FCD 19795-1’s definition of an attempt
![Page 35: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/35.jpg)
PRESENTATION
• The submission of a single biometric sample to the system on the part of the user– One or more presentations as allowed by the
biometric system will create one attempt
• This definition follows ISO/IEC FCD 19795-1’s definition of a presentation
![Page 36: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/36.jpg)
INTERACTION
• The action(s) that take place within a presentation– One or more interactions will create one
presentation
• This definition conflicts with ISO/IEC FCD 19795-1’s definition as “a sequence of transactions”
![Page 37: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/37.jpg)
HIERARCHY
Transaction
Attempt 1Presentation 1Interaction 1
Attempt 2Presentation 2Interaction 2
………
Attempt NPresentation NInteraction N
![Page 38: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/38.jpg)
BIOMETRICS LABBiometric Standards, Performance and Assurance LaboratoryDepartment of Technology, Leadership and Innovation
RESULTS
![Page 39: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/39.jpg)
ENROLLMENT TIME
![Page 40: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/40.jpg)
INDIVIDUAL VERIFICATION TIME
![Page 41: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/41.jpg)
VERIFICATION TIME
![Page 42: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/42.jpg)
BIOMETRICS LABBiometric Standards, Performance and Assurance LaboratoryDepartment of Technology, Leadership and Innovation
CONCLUSIONS
![Page 43: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/43.jpg)
BENEFITS OF AUTOMATIC CODING
• Eliminates need for manual video coding• Video coding is a time consuming task
and has potential for errors• Goal is to create a consistent measure of
biometric transactions
![Page 44: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/44.jpg)
LESSONS LEARNED
• Experimental test conditions are not always stable– Due to cameras being moved/bumped, they
will not always be in the same location
• Original version of software did not take this into account
• Second version allowed the area of interest to be selected based on a frame of the video
![Page 45: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/45.jpg)
RELATION TO HBSI
• This experiment addresses the need to automate the error detection in the Human Biometric Sensor Interaction (HBSI) model
• HBSI is concerned with classifying correct and incorrect presentations into quantifiable metrics
![Page 46: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/46.jpg)
HBSI ERROR METRICS
![Page 47: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/47.jpg)
HBSI
• This philosophy can be duplicated to record these error metrics
• Ex. 1 If all lights are extinguished and green light is shown, SPS
• Ex 2. If all lights remain on until system time out and red light is shown, FTD
![Page 48: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/48.jpg)
NEXT STEPS
• Methodology can be replicated for other modalities as well
• Any system that provides feedback can be video recorded and analyzed
• Automatically code HBSI error metrics
![Page 50: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/50.jpg)
BIOMETRICS LABBiometric Standards, Performance and Assurance LaboratoryDepartment of Technology, Leadership and Innovation
QUESTIONS?
![Page 51: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/51.jpg)
REFERENCES
[1] Sidlauskas, D., Tamer, S., (2007). Hand Geometry Recognition. Handbook of Biometrics. Springer US. doi: 10.1007/978-0-387-71041-9_5
[2] Liu, S., & Silverman, M. (2001). A practical guide to biometric security technology. IT Professional, 3(1), 27–32. Retrieved from http://ieeexplore.ieee.org/xpls/abs_all.jsp?arnumber=899930
[3] Sanchez-Reillo, R., & Gonzalez-Marcas, A. (2000). Access control system with hand geometry verification and smart cards. Aerospace and Electronic Systems Magazine, IEEE, 15(45), 45–48. Retrieved from http://ieeexplore.ieee.org/xpls/abs_all.jsp?arnumber=82 5671
[4] Tamer, S., Elliott, S., (2009, July) Time and Attendance. Encyclopedia of Biometrics. Springer US. doi:10.1007/978-0-387-73003-5_114
![Page 52: (2013) Automatic Detection of Biometrics Transaction Times](https://reader033.vdocuments.us/reader033/viewer/2022061121/54673fbdaf795999788b6bdd/html5/thumbnails/52.jpg)
REFERENCES
[5] Poh, N., Bourlai, T., & Kittler, J. (2010). A multimodal biometric test bed for quality-dependent, cost-sensitive and client-specific score-level fusion algorithms. Pattern Recognition, 43(3), 1094–1105. doi:10.1016/j.patcog.2009.09.011
[6] Bailey, B. P., Konstan, J. a., & Carlis, J. V. (2000). Measuring the effects of interruptions on task performance in the user interface.
SMC 2000 Conference Proceedings. 2000 IEEE International Conference on Systems, Man and Cybernetics. “Cybernetics Evolving to Systems, Humans, Organizations, and their Complex Interactions” (Cat. No.00CH37166), 2, 757–762. doi:10.1109/ICSMC.2000.885940
[7] Reliability and Agreement of Subjective Judgments. Journal of Counseling Psychology, 22(4), 358–376.
[8] Lazarick, R. T., Kukula, E. P., & Elliott, S. J. (2009, July). Operational Times. Encyclopedia of Biometrics. Springer US. doi:10.1007/978-0-387-73003-5_114