Abstract | ||
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Child Pornography is an increasingly visible rising cybercrime in the world today. Over the past decade, with rapid growth in smart phone usage, readily available free Cloud Computing storage, and various mobile communication apps, child pornographers have found a convenient and reliable mobile platform for instantly sharing pictures or videos of children being sexually abused. Within this new paradigm, law enforcement officers are finding that detecting, gathering, and processing evidence for the prosecution of child pornographers is becoming increasingly challenging. Deep learning is a machine learning method that models high-level abstractions in data and extracts hierarchical representations of data by using a deep graph with multiple processing layers. This paper presents a conceptual model of deep learning approach for detecting child pornography within the new paradigm by using log analysis, file name analysis and cell site analysis which investigate text logs of events that have happened in the smart phone at the scene of the crime using physical and logical acquisition to assists law enforcement officers in gathering and processing child pornography evidence for prosecution. In addition, this paper shows an illustrative example of logical and physical acquisition on smart phones using forensics tools. |
Year | DOI | Venue |
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2017 | 10.1007/978-3-319-65521-5_32 | ADVANCES IN NETWORK-BASED INFORMATION SYSTEMS, NBIS-2017 |
Keywords | Field | DocType |
Conceptual model,Deep learning,Child pornography,Log analysis,File name analysis,Cell site analysis,Smart phone,Forensics tools,Logical and physical acquisition | Child pornography,Internet privacy,Logical conjunction,Conceptual model,Computer science,Computer network,Cybercrime,Artificial intelligence,Deep learning,Law enforcement,Mobile telephony,Cloud computing | Conference |
Volume | ISSN | Citations |
7 | 2367-4512 | 0 |
PageRank | References | Authors |
0.34 | 20 | 7 |
Name | Order | Citations | PageRank |
---|---|---|---|
Farkhund Iqbal | 1 | 230 | 30.06 |
Andrew Marrington | 2 | 136 | 13.91 |
Patrick C. K. Hung | 3 | 655 | 74.68 |
Jing-Jie Lin | 4 | 1 | 1.03 |
Guan-Pu Pan | 5 | 0 | 1.01 |
Shih-Chia Huang | 6 | 657 | 42.31 |
Benjamin Yankson | 7 | 0 | 1.35 |