Evaluation of Automated Identity Masking Method (AIM) in Naturalistic Driving Study (NDS)
Title | Evaluation of Automated Identity Masking Method (AIM) in Naturalistic Driving Study (NDS) |
Publication Type | Conference Paper |
Year of Publication | 2017 |
Authors | Baragchizadeh, A., Karnowski, T. P., Bolme, D. S., O’Toole, A. J. |
Conference Name | 2017 12th IEEE International Conference on Automatic Face Gesture Recognition (FG 2017) |
Date Published | May |
Publisher | IEEE |
ISBN Number | 978-1-5090-4023-0 |
Keywords | action perception, AIM, Algorithm design and analysis, automated identity masking method, Automated Response Actions, composability, driver information systems, edge detection, edge-detection filter, Face, face recognition, facial action transfer deidentification algorithm, facial behavior annotation, FAT mask, image annotation, Image edge detection, mirrors, naturalistic driving study, NDS, personalized supervised bilinear regression method, pubcrawl, regression analysis, Resiliency, signal detection, signal detection theory, Vehicles, video data, video signal processing |
Abstract | Identity masking methods have been developed in recent years for use in multiple applications aimed at protecting privacy. There is only limited work, however, targeted at evaluating effectiveness of methods-with only a handful of studies testing identity masking effectiveness for human perceivers. Here, we employed human participants to evaluate identity masking algorithms on video data of drivers, which contains subtle movements of the face and head. We evaluated the effectiveness of the "personalized supervised bilinear regression method for Facial Action Transfer (FAT)" de-identification algorithm. We also evaluated an edge-detection filter, as an alternate "fill-in" method when face tracking failed due to abrupt or fast head motions. Our primary goal was to develop methods for humanbased evaluation of the effectiveness of identity masking. To this end, we designed and conducted two experiments to address the effectiveness of masking in preventing recognition and in preserving action perception. 1- How effective is an identity masking algorithm?We conducted a face recognition experiment and employed Signal Detection Theory (SDT) to measure human accuracy and decision bias. The accuracy results show that both masks (FAT mask and edgedetection) are effective, but that neither completely eliminated recognition. However, the decision bias data suggest that both masks altered the participants' response strategy and made them less likely to affirm identity. 2- How effectively does the algorithm preserve actions? We conducted two experiments on facial behavior annotation. Results showed that masking had a negative effect on annotation accuracy for the majority of actions, with differences across action types. Notably, the FAT mask preserved actions better than the edge-detection mask. To our knowledge, this is the first study to evaluate a deidentification method aimed at preserving facial ac- ions employing human evaluators in a laboratory setting. |
URL | https://ieeexplore.ieee.org/document/7961766/ |
DOI | 10.1109/FG.2017.54 |
Citation Key | baragchizadeh_evaluation_2017 |
- image annotation
- video signal processing
- video data
- vehicles
- signal detection theory
- signal detection
- Resiliency
- regression analysis
- pubcrawl
- personalized supervised bilinear regression method
- NDS
- naturalistic driving study
- mirrors
- Image edge detection
- action perception
- FAT mask
- facial behavior annotation
- facial action transfer deidentification algorithm
- face recognition
- Face
- edge-detection filter
- edge detection
- driver information systems
- composability
- Automated Response Actions
- automated identity masking method
- Algorithm design and analysis
- AIM