2014
DOI: 10.1371/journal.pone.0099212
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Recognizing Disguised Faces: Human and Machine Evaluation

Abstract: Face verification, though an easy task for humans, is a long-standing open research area. This is largely due to the challenging covariates, such as disguise and aging, which make it very hard to accurately verify the identity of a person. This paper investigates human and machine performance for recognizing/verifying disguised faces. Performance is also evaluated under familiarity and match/mismatch with the ethnicity of observers. The findings of this study are used to develop an automated algorithm to verif… Show more

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Cited by 113 publications
(79 citation statements)
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“…The database developed in this work is first of its kind and includes ground truth for every images that illustrate presence of glasses, goggles, mustache, beard, that will enable researchers to develop advanced algorithms in accurately recognizing such real faces under disguised appearances. Secondly, we also provide a comparative performance evaluation from the two popular commercial matchers and an effective matcher for recognizing disguised faces proposed in recent journal publication [7]. The experimental results also illustrate challenges in automatically detecting face images from two commercial matchers, along with publicly available trained detector [6], and need for further work in this area.…”
Section: Our Workmentioning
confidence: 99%
“…The database developed in this work is first of its kind and includes ground truth for every images that illustrate presence of glasses, goggles, mustache, beard, that will enable researchers to develop advanced algorithms in accurately recognizing such real faces under disguised appearances. Secondly, we also provide a comparative performance evaluation from the two popular commercial matchers and an effective matcher for recognizing disguised faces proposed in recent journal publication [7]. The experimental results also illustrate challenges in automatically detecting face images from two commercial matchers, along with publicly available trained detector [6], and need for further work in this area.…”
Section: Our Workmentioning
confidence: 99%
“…We train the convolutional neural network by the face pictures which provided by IIITDisguise Face Database [1,2]. But its images' size is 130*150.…”
Section: Convolutional Neural Networkmentioning
confidence: 99%
“…We use kalman filter to combine the information to get better result than the data only be gotten by one kind of sensor. Although we train our convolutional neural network (CNN) by IIITDisguise Face Database [1,2], which provides lots of faces pictures with infrared and color version, with 130*150 pixels. But our images' size is different from the form.…”
Section: Introductionmentioning
confidence: 99%
“…Low resolution images are also normalized in a similar manner where the inter-eye distance is normalized in proportion to the image resolution. 3 Source code available at http://www.cse.oulu.fi/CMV/Downloads-/ LPQMatlab 4 Source code available at http://labelme.csail.mit.edu-/Release3.0/browser Tools/php/matlab_toolbox.php 5 For images on which the eye-detection failed because of low resolution, normalization was performed manually. …”
Section: Algorithm 1 Co-transfer Learningmentioning
confidence: 99%
“…It is therefore desirable to build a system where surveillance cameras coupled with a face recognition algorithm can be used to automatically identify individuals from a watch-list. Along with the challenges of pose, expression, illumination [1], aging [2], disguise [3], [4], and plastic surgery [5], [6] in face recognition, matching a watch-list photograph to an image obtained from surveillance camera also requires the capability of matching across resolutions. For example, the watch-list photograph could be a high resolution image whereas the surveillance camera images are generally low resolution images.…”
mentioning
confidence: 99%