T. &. Gunawan, M. F. Alghifari, M. A. Morshidi, and M. Kartiwi, A review on emotion recognition algorithms using speech analysis, Indonesian Journal of Electrical Engineering and Informatics, vol.6, pp.12-20, 2018.

M. Chen, J. Yang, Y. Hao, S. Mao, and K. Hwang, A 5G Cognitive System for Healthcare. Big Data Cogn, 2002.

B. C. Ko, A Brief Review of Facial Emotion Recognition Based on Visual Information, Sensors, vol.18, issue.2, p.401, 2018.

N. &. Dael, M. &. Mortillaro, and K. Scherer, Emotion Expression in Body Action and Posture, Emotion, 2011.

C. M. Dubois, O. V. Lopez, E. E. Beale, B. C. Healy, J. K. Boehm et al., Relationships between positive psychological constructs and health outcomes in patients with cardiovascular disease: A systematic review, International Journal of Cardiology, vol.195, pp.265-280, 2015.

A. J. Burger, M. A. Lumley, J. N. Carty, D. V. Latsch, E. R. Thakur et al., The effects of a novel psychological attribution and emotional awareness and expression therapy for chronic musculoskeletal pain: A preliminary, uncontrolled trial, Journal of Psychosomatic Research, vol.81, pp.1-8, 2016.

J. C. Huffman, R. A. Millstein, and C. A. Mastromauro, J Happiness Stud, vol.17, 1985.

G. Cloud-vision and A. Homepage, IBM Watson Visual Recognition Homepage

Ø. Dale, E. Sundby-boysen, I. Svagård, and ;. M. Lang, One Size Does Not Fit all: Design and implementation considerations when introducing touch-based infotainment systems to nursing home residents, computers helping people with special needs, Proceedings of IEEE ICASSP 2003, vol.12, p.1, 2003.

T. L. Nwe, N. T. Hieu, and D. K. Limbu, Bhattacharyya distance based emotional dissimilarity measure for emotion classification, Proceedings of IEEE ICASSP 2013, pp.7512-7516, 2013.

K. Han, D. Yu, and I. Tashev, Speech Emotion Recognition Using Deep Neural Network and Extreme Learning Machine, pp.223-227, 2014.

L. E. Libero, C. E. Stevens, and R. K. Kana, Attribution of emotions to body postures: An independent component analysis study of functional connectivity in autism, Hum. Brain Mapp, vol.35, pp.5204-5218, 2014.

N. Dael, M. Mortillaro, and K. R. Scherer, Emotion expression in body action and posture, vol.12, pp.1085-1101, 2012.

M. Z. Uddin, M. M. Hassan, A. Almogren, M. Zuair, G. Fortino et al., A facial expression recognition system using robust face features from depth videos and deep learning, Comput. Electr. Eng, vol.63, pp.114-125, 2017.

Q. Mao, Q. Rao, Y. Yu, and M. Dong, Hierarchical Bayesian Theme Models for Multipose Facial Expression Recognition, IEEE Trans. Multimed, vol.19, issue.4, pp.861-873, 2017.

M. J. Cossetin, J. C. Nievola, L. Koerich, and A. , « Facial expression recognition using a pairwise feature selection and classification approach, 2016 International Joint Conference on Neural Networks (IJCNN), pp.5149-5155, 2016.

M. H. Siddiqi, R. Ali, A. M. Khan, Y. Park, and S. Lee, Human Facial Expression Recognition Using Stepwise Linear Discriminant Analysis and Hidden Conditional Random Fields, IEEE Transactions on Image Processing, vol.24, pp.1386-1398, 2015.

P. Ekman, Facial expression and emotion, American psychologist, vol.48, issue.4, p.384, 1993.

A. Dantcheva, P. Bilinski, J. C. Broutart, P. Robert, and F. Bremond, Emotion facial recognition by the means of automatic video analysis, Gerontechnology Journal, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01446930

S. Tivatansakul, G. Chalumporn, S. Puangpontip, Y. Kankanokkul, T. Achalaku et al., Healthcare system focusing on emotional aspect using augmented reality: Emotion detection by facial expression, Advances in Human Aspects of Healthcare, vol.3, p.375, 2014.

R. Almutiry, S. Couth, E. Poliakoff, S. Kotz, M. Silverdale et al., Facial Behaviour Analysis in Parkinson's Disease, Medical Imaging and Augmented Reality. MIAR 2016, vol.9805, 2016.

A. Menychtas, P. Tsanakas, and I. Maglogiannis, Automated integration of wireless biosignal collection devices for patient-centred decision-making in point-of-care systems, Healthcare technology letters, vol.3, issue.1, pp.34-40, 2016.

C. Panagopoulos, Utilizing a homecare platform for remote monitoring of patients with idiopathic pulmonary fibrosis, GeNeDis, pp.177-187, 2016.

I. Homepage,

G. Bradski and A. Kaehler, Learning OpenCV: Computer vision with the OpenCV library, 2008.

H. Bay, T. Tuytelaars, and V. G. Gool, Speeded Up Robust Features, Computer Vision and Image Understanding, vol.110, issue.3, pp.346-359, 2008.

M. J. Lyons, S. Akemastu, M. Kamachi, and J. Gyoba, Data Mining Software in Java Homepage, vol.3

, Coding Facial Expressions with Gabor Wavelets, 3rd IEEE International Conference on Automatic Face and Gesture Recognition, pp.200-205, 1998.

D. Arthur and S. Vassilvitskii, SODA '07; 2007. k-means++: The advantages of careful seeding, Proceedings of the eighteenth annual ACM-SIAM symposium on Discrete algorithms, pp.1027-1035

F. Chakhssi, J. T. Kraiss, M. Sommers-spijkerman, and E. T. Bohlmeijer, The effect of positive psychology interventions on well-being and distress in clinical samples with psychiatric or somatic disorders: a systematic review and meta-analysis, BMC Psychiatry, vol.18, issue.1, p.211, 2018.

H. Fouad and H. Eg, Continuous Health-monitoring for early Detection of Patient by Web Telemedicine System, International Conference on Circuits, Systems and Signal Processing, 2014.