T. Akiyoshi, H. Kuroyanagi, M. Ueno, M. Oya, Y. Fujimoto et al., Learning curve for standardized laparoscopic surgery for colorectal cancer under supervision: a single-center experience, Surgical endoscopy, vol.25, issue.5, pp.1409-1414, 2011.

K. S. Arora, N. Khan, H. Abboudi, M. S. Khan, P. Dasgupta et al., Learning curves for cardiothoracic and vascular surgical procedures-a systematic review, pp.1-13, 2014.

J. Barrie, D. G. Jayne, J. Wright, C. Murray, F. J. Collinson et al., Attaining surgical competency and its implications in surgical clinical trial design: a systematic review of the learning curve in laparoscopic and robot-assisted laparoscopic colorectal cancer surgery, Annals of surgical oncology, vol.21, issue.3, pp.829-840, 2014.

J. D. Birkmeyer, J. F. Finks, A. O'reilly, M. Oerline, A. M. Carlin et al., Surgical skill and complication rates after bariatric surgery, New England Journal of Medicine, vol.369, issue.15, pp.1434-1442, 2013.

D. H. Choi, W. K. Jeong, S. W. Lim, T. S. Chung, J. I. Park et al., Learning curves for laparoscopic sigmoidectomy used to manage curable sigmoid colon cancer: single-institute, three-surgeon experience, Surgical endoscopy, vol.23, issue.3, pp.622-628, 2009.

F. Despinoy, D. Bouget, G. Forestier, C. Penet, N. Zemiti et al., Unsupervised trajectory segmentation for surgical gesture recognition in robotic training, IEEE Transactions on Biomedical Engineering, 2015.
URL : https://hal.archives-ouvertes.fr/lirmm-01217023

R. A. Dewey, Psychology: an introduction, 2007.

B. J. Dlouhy and R. C. Rao, Surgical skill and complication rates after bariatric surgery, The New England Journal of Medicine, vol.370, issue.3, pp.285-285, 2014.

G. Forestier, F. Lalys, L. Riffaud, B. Trelhu, and P. Jannin, Classification of surgical processes using dynamic time warping, Journal of Biomedical Informatics, vol.45, issue.2, pp.255-264, 2012.
URL : https://hal.archives-ouvertes.fr/inserm-00669624

G. Forestier, F. Lalys, R. Riffaud, L. Collins, J. Meixensberger et al., Multi-site study of surgical practice in neurosurgery based on surgical process models, Journal of Biomedical Informatics, vol.46, issue.5, pp.822-829, 2013.
URL : https://hal.archives-ouvertes.fr/inserm-00853846

G. Forestier, L. Riffaud, and P. Jannin, Automatic phase prediction from low-level surgical activities, International journal of computer assisted radiology and surgery, pp.1-9, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01145855

M. Hanzly, A. Frederick, T. Creighton, K. Atwood, D. Mehedint et al., Learning curves for robot-assisted and laparoscopic partial nephrectomy, Journal of Endourology, 2014.

A. Hopper, M. Jamison, and W. Lewis, Learning curves in surgical practice, Postgraduate Medical Journal, vol.83, issue.986, pp.777-779, 2007.

G. Islam, K. Kahol, B. Li, M. Smith, and V. L. Patel, Affordable, web-based surgical skill training and evaluation tool, Journal of biomedical informatics, vol.59, pp.102-114, 2016.

C. Jackson and K. Gibbin, ) per ardua...training tomorrow's surgeons using inter alia lessons from aviation, Journal of the Royal Society of Medicine, vol.99, issue.11, pp.554-558, 2006.

R. M. Jiménez-rodríguez, J. M. Díaz-pavón, J. De, . Fdlp, E. Prendes-sillero et al., Learning curve for robotic-assisted laparoscopic rectal cancer surgery, International Journal of Colorectal Disease, vol.28, issue.6, pp.815-821, 2013.

J. C. Kang, S. W. Jao, M. H. Chung, C. C. Feng, and Y. J. Chang, The learning curve for hand-assisted laparoscopic colectomy: a single surgeons experience, Surgical endoscopy, vol.21, issue.2, pp.234-237, 2007.

N. Khan, H. Abboudi, M. S. Khan, P. Dasgupta, and K. Ahmed, Measuring the surgical learning curve: methods, variables and competency, BJU International, vol.113, issue.3, pp.504-508, 2014.

F. Lalys and P. Jannin, Surgical process modelling: a review, International Journal of Computer Assisted Radiology and Surgery, vol.8, issue.5, pp.1-17, 2013.
URL : https://hal.archives-ouvertes.fr/inserm-00926470

F. Lalys, L. Riffaud, X. Morandi, and P. Jannin, Automatic phases recognition in pituitary surgeries by microscope images classification, Information Processing in Computer-Assisted Interventions, pp.34-44, 2010.
URL : https://hal.archives-ouvertes.fr/inserm-00616977

F. Lalys, D. Bouget, L. Riffaud, and P. Jannin, Automatic knowledge-based recognition of low-level tasks in ophthalmological procedures, International journal of computer assisted radiology and surgery, vol.8, issue.1, pp.39-49, 2013.
URL : https://hal.archives-ouvertes.fr/inserm-00695646

L. Reste, P. J. Henaux, P. L. Riffaud, L. Haegelen, C. Morandi et al., Influence of cumulative surgical experience on the outcome of poor-grade patients with ruptured intracranial aneurysm, Acta neurochirurgica, vol.157, issue.1, pp.1-7, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01213399

H. C. Lin, I. Shafran, T. E. Murphy, A. M. Okamura, D. D. Yuh et al., Automatic detection and segmentation of robot-assisted surgical motions, Medical Image Computing and Computer-Assisted InterventionMICCAI, pp.802-810, 2005.

H. C. Lin, I. Shafran, D. Yuh, and G. D. Hager, Towards automatic skill evaluation: Detection and segmentation of robot-assisted surgical motions, Computer Aided Surgery, vol.11, issue.5, pp.220-230, 2006.

L. Mackenzie, J. Ibbotson, C. Cao, and A. Lomax, Hierarchical decomposition of laparoscopic surgery: a human factors approach to investigating the operating room environment, Minimally Invasive Therapy & Allied Technologies, vol.10, issue.3, pp.121-127, 2001.

J. Martin, G. Regehr, R. Reznick, H. Macrae, J. Murnaghan et al., Objective structured assessment of technical skill (OSATS) for surgical residents, British Journal of Surgery, vol.84, issue.2, pp.273-278, 1997.

J. E. Mazur and R. Hastie, Learning as accumulation: a reexamination of the learning curve, Psychological Bulletin, vol.85, issue.6, p.1256, 1978.

N. Mehta, R. Haluck, M. Frecker, and A. Snyder, Sequence and task analysis of instrument use in common laparoscopic procedures, Surgical endoscopy, vol.16, issue.2, pp.280-285, 2002.

C. Meißner, J. Meixensberger, A. Pretschner, and T. Neumuth, Sensor-based surgical activity recognition in unconstrained environments, Minimally Invasive Therapy & Allied Technologies, 2014.

T. Neumuth, N. Durstewitz, M. Fischer, G. Strauß, A. Dietz et al., Structured recording of intraoperative surgical workflows, Medical imaging, International Society for Optics and Photonics, vol.61, p.450, 2006.

S. H. Park1a, I. H. Suh, C. Jh, J. Paik, F. E. Ritter et al., Modeling surgical skill learning with cognitive simulation, Medicine Meets Virtual Reality, vol.18, p.428, 2011.

I. Pavlidis, P. Tsiamyrtzis, D. Shastri, A. Wesley, Y. Zhou et al., Fast by nature-how stress patterns define human experience and performance in dexterous tasks, Scientific Reports, vol.2, 2012.

C. R. Ramsay, A. Grant, S. Wallace, P. Garthwaite, A. Monk et al., Statistical assessment of the learning curves of health technologies, Core Research, 2001.

F. E. Ritter and L. J. Schooler, The learning curve, ternational encyclopedia of the social and behavioral sciences, vol.13, pp.8602-8605, 2001.

J. Rodriguez-paz, M. Kennedy, E. Salas, A. Wu, J. Sexton et al., Beyond see one, do one, teach one: toward a different training paradigm. Quality and Safety in Health Care, vol.18, pp.63-68, 2009.

S. O. Rogers, A. A. Gawande, M. Kwaan, A. L. Puopolo, C. Yoon et al., Analysis of surgical errors in closed malpractice claims at 4 liability insurers, Surgery, vol.140, issue.1, pp.25-33, 2006.

H. Sakoe and S. Chiba, Dynamic programming algorithm optimization for spoken word recognition, IEEE Transactions on Acoustics, Speech and Signal Processing, vol.26, issue.1, pp.43-49, 1978.

S. Schumann, U. Bühligen, and T. Neumuth, Outcome quality assessment by surgical process compliance measures in laparoscopic surgery, Artificial intelligence in medicine, vol.63, issue.2, pp.85-90, 2015.

Y. Sharma, T. Plötz, N. Hammerld, S. Mellor, R. Mcnaney et al., Automated surgical osats prediction from videos, 2014 IEEE 11th International Symposium on Biomedical Imaging (ISBI), pp.461-464, 2014.

P. P. Tekkis, A. J. Senagore, C. P. Delaney, and V. W. Fazio, Evaluation of the learning curve in laparoscopic colorectal surgery: comparison of right-sided and left-sided resections, Annals of surgery, vol.242, issue.1, p.83, 2005.

P. Van-hove, G. Tuijthof, E. Verdaasdonk, L. Stassen, and J. Dankelman, Objective assessment of technical surgical skills, British Journal of Surgery, vol.97, issue.7, pp.972-987, 2010.

B. Varadarajan, C. Reiley, H. Lin, S. Khudanpur, and G. Hager, Data-derived models for segmentation with application to surgical assessment and training, Medical Image Computing and Computer-Assisted InterventionMICCAI, pp.426-434, 2009.

T. P. Wright, Factors affecting the cost of airplanes, Journal of the Aeronautical Sciences (Institute of the Aeronautical Sciences), vol.3, issue.4, 2012.

L. E. Yelle, The learning curve: Historical review and comprehensive survey, Decision Sciences, vol.10, issue.2, pp.302-328, 1979.