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A multi-factor knuckle and nail bed verification tool for forensic imagery analysis

A multi-factor knuckle and nail bed verification tool for forensic imagery analysis
A multi-factor knuckle and nail bed verification tool for forensic imagery analysis

Background: the grooming process involves sexually explicit images or videos sent by the offender to the minor. Although offenders may try to conceal their identity, these sexts often include hand, knuckle, and nail bed imagery. 

Objective: we present a novel biometric hand verification tool designed to identify online child sexual exploitation offenders from images or videos based on biometric/forensic features extracted from hand regions. The system can match and authenticate hand component imagery against a constrained custody suite reference of a known subject by employing advanced image processing and machine learning techniques. 

Data: we conducted experiments on two hand datasets: Purdue University and Hong Kong. In particular, the Purdue dataset collected for this study allowed us to evaluate the system performance on various parameters, with specific emphasis on camera distance and orientation. Methods: To explore the performance and reliability of the biometric verification models, we considered several parameters, including hand orientation, distance from the camera, single or multiple fingers, architecture of the models, and performance loss functions. Results: Results showed the best performance for pictures sampled from the same database and with the same image capture conditions. 

Conclusion: the authors conclude the biometric hand verification tool offers a robust solution that will operationally impact law enforcement by allowing agencies to investigate and identify online child sexual exploitation offenders more effectively. We highlight the strength of the system and the current limitations.

Biometric identification, Forensic investigative tool, Hands, Knuckles, Online child sexual exploitation
0145-2134
Santopietro, Marco
fcfe5a84-a740-4a15-898c-a170b48a8264
Guest, Richard
93533dbd-b101-491b-83cc-39ccfdc18165
Seigfried-Spellar, Kathryn
46258a7d-1d25-41c5-b62b-06dd300fec94
Elliott, Stephen
1eab544a-2973-40c7-8782-ee8e092a72cc
Santopietro, Marco
fcfe5a84-a740-4a15-898c-a170b48a8264
Guest, Richard
93533dbd-b101-491b-83cc-39ccfdc18165
Seigfried-Spellar, Kathryn
46258a7d-1d25-41c5-b62b-06dd300fec94
Elliott, Stephen
1eab544a-2973-40c7-8782-ee8e092a72cc

Santopietro, Marco, Guest, Richard, Seigfried-Spellar, Kathryn and Elliott, Stephen (2024) A multi-factor knuckle and nail bed verification tool for forensic imagery analysis. Child Abuse & Neglect, 154, [106910]. (doi:10.1016/j.chiabu.2024.106910).

Record type: Article

Abstract

Background: the grooming process involves sexually explicit images or videos sent by the offender to the minor. Although offenders may try to conceal their identity, these sexts often include hand, knuckle, and nail bed imagery. 

Objective: we present a novel biometric hand verification tool designed to identify online child sexual exploitation offenders from images or videos based on biometric/forensic features extracted from hand regions. The system can match and authenticate hand component imagery against a constrained custody suite reference of a known subject by employing advanced image processing and machine learning techniques. 

Data: we conducted experiments on two hand datasets: Purdue University and Hong Kong. In particular, the Purdue dataset collected for this study allowed us to evaluate the system performance on various parameters, with specific emphasis on camera distance and orientation. Methods: To explore the performance and reliability of the biometric verification models, we considered several parameters, including hand orientation, distance from the camera, single or multiple fingers, architecture of the models, and performance loss functions. Results: Results showed the best performance for pictures sampled from the same database and with the same image capture conditions. 

Conclusion: the authors conclude the biometric hand verification tool offers a robust solution that will operationally impact law enforcement by allowing agencies to investigate and identify online child sexual exploitation offenders more effectively. We highlight the strength of the system and the current limitations.

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More information

Accepted/In Press date: 11 June 2024
Published date: 21 June 2024
Keywords: Biometric identification, Forensic investigative tool, Hands, Knuckles, Online child sexual exploitation

Identifiers

Local EPrints ID: 501471
URI: http://eprints.soton.ac.uk/id/eprint/501471
ISSN: 0145-2134
PURE UUID: 1af85731-28e8-466b-b791-70a2099a9c27
ORCID for Richard Guest: ORCID iD orcid.org/0000-0001-7535-7336

Catalogue record

Date deposited: 02 Jun 2025 16:50
Last modified: 03 Jun 2025 02:14

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Contributors

Author: Marco Santopietro
Author: Richard Guest ORCID iD
Author: Kathryn Seigfried-Spellar
Author: Stephen Elliott

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