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Enhancing sensor pattern noise for source camera identification: an empirical evaluation

Enhancing sensor pattern noise for source camera identification: an empirical evaluation
Enhancing sensor pattern noise for source camera identification: an empirical evaluation

The sensor pattern noise (SPN) based source camera identification technique has been well established. The common practice is to subtract a denoised image from the original one to get an estimate of the SPN. Various techniques to improve SPN's reliability have previously been proposed. Identifying the most effective technique is important, for both researchers and forensic investigators in law enforcement agencies. Unfortunately, the results from previous studies have proven to be irreproducible and incomparable-there is no consensus on which technique works the best. Here, we extensively evaluate various ways of enhancing the SPN by using the public "Dresden" database. We identify which enhancing methods are more effective and offer some insights into the behavior of SPN. For example, we find that the most effective enhancing methods share a common strategy of spectrum flattening. We also show that methods that only aim at reducing the contamination from image content do not lead to satisfying results, since the non-unique artifacts (NUA) among different cameras are the major troublemaker to the identification performance. While there is a trend of employing sophisticate methods to predict the impact of image content, our results suggest that more effort should be invested to tame the NUAs.

Digital image forensics, Sensor pattern noise, Source camera identification
85-90
Association for Computing Machinery
Liu, Bei Bei
1e5720f9-1103-4ed9-bb45-7215c7ca4a36
Wei, Xingjie
dfc66874-e1b1-4898-bf19-3c4cb9d639ae
Yan, Jeff
a2c03187-3722-46c8-b73b-439eb9d1a10e
Liu, Bei Bei
1e5720f9-1103-4ed9-bb45-7215c7ca4a36
Wei, Xingjie
dfc66874-e1b1-4898-bf19-3c4cb9d639ae
Yan, Jeff
a2c03187-3722-46c8-b73b-439eb9d1a10e

Liu, Bei Bei, Wei, Xingjie and Yan, Jeff (2015) Enhancing sensor pattern noise for source camera identification: an empirical evaluation. In IH and MMSec 2015 - Proceedings of the 2015 ACM Workshop on Information Hiding and Multimedia Security. Association for Computing Machinery. pp. 85-90 . (doi:10.1145/2756601.2756614).

Record type: Conference or Workshop Item (Paper)

Abstract

The sensor pattern noise (SPN) based source camera identification technique has been well established. The common practice is to subtract a denoised image from the original one to get an estimate of the SPN. Various techniques to improve SPN's reliability have previously been proposed. Identifying the most effective technique is important, for both researchers and forensic investigators in law enforcement agencies. Unfortunately, the results from previous studies have proven to be irreproducible and incomparable-there is no consensus on which technique works the best. Here, we extensively evaluate various ways of enhancing the SPN by using the public "Dresden" database. We identify which enhancing methods are more effective and offer some insights into the behavior of SPN. For example, we find that the most effective enhancing methods share a common strategy of spectrum flattening. We also show that methods that only aim at reducing the contamination from image content do not lead to satisfying results, since the non-unique artifacts (NUA) among different cameras are the major troublemaker to the identification performance. While there is a trend of employing sophisticate methods to predict the impact of image content, our results suggest that more effort should be invested to tame the NUAs.

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More information

Published date: 17 June 2015
Additional Information: Publisher Copyright: © 2015 ACM.
Venue - Dates: 3rd ACM Information Hiding and Multimedia Security Workshop, IH and MMSec 2015, , Portland, United States, 2015-06-17 - 2015-06-19
Keywords: Digital image forensics, Sensor pattern noise, Source camera identification

Identifiers

Local EPrints ID: 500861
URI: http://eprints.soton.ac.uk/id/eprint/500861
PURE UUID: 8e52e8fd-ccc6-431f-bd04-e5c31df984ea

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Date deposited: 14 May 2025 16:50
Last modified: 14 May 2025 16:50

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Contributors

Author: Bei Bei Liu
Author: Xingjie Wei
Author: Jeff Yan

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