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A deep learning approach to crack detection in panel paintings

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Citation

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MLA
Sizyakin, Roman, et al. “A Deep Learning Approach to Crack Detection in Panel Paintings.” Image Processing for Art Investigation (IP4AI), 2018, pp. 40–42.
APA
Sizyakin, R., Cornelis, B., Meeus, L., Martens, M., Voronin, V., & Pizurica, A. (2018). A deep learning approach to crack detection in panel paintings. Image Processing for Art Investigation (IP4AI), 40–42. Gent, Belgium.
Chicago author-date
Sizyakin, Roman, Bruno Cornelis, Laurens Meeus, Maximiliaan Martens, Viacheslav Voronin, and Aleksandra Pizurica. 2018. “A Deep Learning Approach to Crack Detection in Panel Paintings.” In Image Processing for Art Investigation (IP4AI), 40–42. Gent, Belgium.
Chicago author-date (all authors)
Sizyakin, Roman, Bruno Cornelis, Laurens Meeus, Maximiliaan Martens, Viacheslav Voronin, and Aleksandra Pizurica. 2018. “A Deep Learning Approach to Crack Detection in Panel Paintings.” In Image Processing for Art Investigation (IP4AI), 40–42. Gent, Belgium.
Vancouver
1.
Sizyakin R, Cornelis B, Meeus L, Martens M, Voronin V, Pizurica A. A deep learning approach to crack detection in panel paintings. In: Image Processing for Art Investigation (IP4AI). Gent, Belgium; 2018. p. 40–2.
IEEE
[1]
R. Sizyakin, B. Cornelis, L. Meeus, M. Martens, V. Voronin, and A. Pizurica, “A deep learning approach to crack detection in panel paintings,” in Image Processing for Art Investigation (IP4AI), 2018, pp. 40–42.
@inproceedings{8577805,
  author       = {{Sizyakin, Roman and Cornelis, Bruno and Meeus, Laurens and Martens, Maximiliaan and Voronin, Viacheslav and Pizurica, Aleksandra}},
  booktitle    = {{Image Processing for Art Investigation (IP4AI)}},
  language     = {{eng}},
  pages        = {{40--42}},
  title        = {{A deep learning approach to crack detection in panel paintings}},
  year         = {{2018}},
}