An Adaptive Image-based Plagiarism Detection Approach

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MEUSCHKE, Norman, Christopher GONDEK, Daniel SEEBACHER, Corinna BREITINGER, Daniel KEIM, Bela GIPP, 2018. An Adaptive Image-based Plagiarism Detection Approach. JCDL '18 : 18th ACM/IEEE Joint Conference on Digital Libraries. Fort Worth, Texas, USA, Jun 3, 2018 - Jun 7, 2018. In: Proceedings of the 18th ACM/IEEE Joint Conference on Digital Libraries : JCDL '18. New York, USA:ACM Press, pp. 131-140. ISBN 978-1-4503-5178-2. Available under: doi: 10.1145/3197026.3197042

@inproceedings{Meuschke2018Adapt-43004, title={An Adaptive Image-based Plagiarism Detection Approach}, year={2018}, doi={10.1145/3197026.3197042}, isbn={978-1-4503-5178-2}, address={New York, USA}, publisher={ACM Press}, booktitle={Proceedings of the 18th ACM/IEEE Joint Conference on Digital Libraries : JCDL '18}, pages={131--140}, author={Meuschke, Norman and Gondek, Christopher and Seebacher, Daniel and Breitinger, Corinna and Keim, Daniel and Gipp, Bela} }

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