This is a MATLAB R2018a implementation of Photo Response Non-Uniformity (PRNU) based sensor de-identification while preserving biometric utility, as described in our paper:
Banerjee and Ross, "Smartphone Camera De-identification while Preserving Biometric Utility," BTAS 2019 (https://arxiv.org/pdf/2009.08511.pdf)
Take a look at our video for a short demo: (http://iprobe.cse.msu.edu/videos.php)
- MATLAB R2018a (should run on higher versions also but I have not confirmed it)
- Deep Learning Toolbox (for periocular recognition, if DL toolbox is not available please comment lines 75-94 in Demo_Anonymization.m and lines 101-120 in Demo_Spoofing.m)
Example_TestImages
contains 3 example test images from MICHE-I dataset. Please contact the authors for permission if using MICHE-I images.
010_IP5_OU_F_RI_01_2.jpg - Subject Id: 10 Device ID: IP5 (iPhone 5 Device 1) Acquisition settings: OU (Outdoor) Camera used: F (Front camera) Laterality: RI (Right eye) Session: 01 Sample number: 2
066_IP5_IN_F_RI_01_3.jpg - Subject Id: 66 Device ID: IP5 (iPhone 5 Device 2) Acquisition settings: IN (Indoor) Camera used: F (Front camera) Laterality: RI (Right eye) Session: 01 Sample number: 1
072_GS4_OU_F_RI_01_3.jpg - Subject Id: 72 Device ID: GS4 (Samsung Galaxy S4) Acquisition settings: OU (Outdoor) Camera used: F (Front camera) Laterality: RI (Right eye) Session: 01 Sample number: 3
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Filter
andFunctions
contains C++ compiled files for Sensor Pattern Noise (SPN)- PRNU computation from images (http://dde.binghamton.edu/download/camera_fingerprint/) -
Noise Templates Enhanced
,Noise Templates MLE
andNoise Templates Phase
contain some of the sensor reference patterns used in this work (Rear sensors have larger sized reference patterns you can add them for evaluation, change the following scripts if you insert/delete reference patterns:NCC_Computation_MLE.m
,NCC_Computation_Enhanced.m
,NCC_Computation_Phase.m
andDispSensor.m
)
Download the folder on your desktop and run the following scripts: (Please ensure you are in the correct working directory)
- For PRNU Anonymization
Demo_Anonymization.m
- For PRNU Spoofing
Demo_Spoofing.m
For Spoofing use the same sensor for both test image (F.jpg) and candidate image (F.jpg) (Front-Front spoofing, Rear-Rear spoofing but no cross spoofing such as Front-Rear OR Rear-Front).
Helper functions (Read the comments included in individual helper functions for better understanding)
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DispSensor.m : Displays the sensor name as evaluated usign the SPN classifier
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getFingerprint_monochrome.m : Used for computing sensor reference patterns. Please refer to http://dde.binghamton.edu/download/camera_fingerprint/ for more details and follow their citation requirements if you use this code
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NCC_Computation_Enhanced.m : Correlates sensor reference patterns with test noise residuals for Enhanced SPN
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NCC_Computation_MLE.m : Correlates sensor reference patterns with test noise residuals for MLE SPN
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NCC_Computation_Phase.m : Correlates sensor reference patterns with test noise residuals for Phase SPN
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NoiseExtract_Basic.m : Sensor pattern noise extraction used in computing Sensor Reference pattern for Enhanced SPN and test noise residual for Phase SPN
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NoiseExtractFromImage_Enhanced, NoiseExtract_Enhanced.m : Sensor pattern noise extraction used in computing test noise residual for Enhanced SPN
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NoiseExtractFromImage_MLE, NoiseExtract_MLE.m : Sensor pattern noise extraction used in computing Sensor Reference pattern for MLE SPN and test noise residual for MLE SPN
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NoiseExtractFromImage_Phase, NoiseExtract_Phase.m : Sensor pattern noise extraction used in computing Sensor Reference pattern for Phase SPN
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normcor.m : Computes the normalized cross correlation
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Examples illustrated using images located in Example_TestImages folder. Please substitute with other images as needed
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Hyperparameter alpha tuned using validation images on MICHE-I dataset. Please fine tune the hyperparameter as needed
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The scripts provide the computation time, the sensor classification result before and after sensor de-identification as evaluated using 3 algorithms - Phase SPN, Enhanced SPN and MLE SPN, and the images before and after sensor de-identification
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Periocular matching is done using off-the-shelf features from ResNet 101. ROC curves should be computed using the scores
Please cite our paper if you use this code in your own work:
@inproceedings{BTAS2019_PRNUDeid,
title={Smartphone Camera De-identification while Preserving Biometric Utility},
author={Banerjee, Sudipta and Ross, Arun},
booktitle={IEEE 10th International Conference on Biometrics Theory, Applications and Systems (BTAS)},
year={2019}
}