Affective Robots: Evaluation of Automatic Emotion Recognition Approaches on a Humanoid Robot towards Emotionally Intelligent Machines
Commenced in January 2007
Frequency: Monthly
Edition: International
Paper Count: 32794
Affective Robots: Evaluation of Automatic Emotion Recognition Approaches on a Humanoid Robot towards Emotionally Intelligent Machines

Authors: Silvia Santano Guillén, Luigi Lo Iacono, Christian Meder

Abstract:

One of the main aims of current social robotic research is to improve the robots’ abilities to interact with humans. In order to achieve an interaction similar to that among humans, robots should be able to communicate in an intuitive and natural way and appropriately interpret human affects during social interactions. Similarly to how humans are able to recognize emotions in other humans, machines are capable of extracting information from the various ways humans convey emotions—including facial expression, speech, gesture or text—and using this information for improved human computer interaction. This can be described as Affective Computing, an interdisciplinary field that expands into otherwise unrelated fields like psychology and cognitive science and involves the research and development of systems that can recognize and interpret human affects. To leverage these emotional capabilities by embedding them in humanoid robots is the foundation of the concept Affective Robots, which has the objective of making robots capable of sensing the user’s current mood and personality traits and adapt their behavior in the most appropriate manner based on that. In this paper, the emotion recognition capabilities of the humanoid robot Pepper are experimentally explored, based on the facial expressions for the so-called basic emotions, as well as how it performs in contrast to other state-of-the-art approaches with both expression databases compiled in academic environments and real subjects showing posed expressions as well as spontaneous emotional reactions. The experiments’ results show that the detection accuracy amongst the evaluated approaches differs substantially. The introduced experiments offer a general structure and approach for conducting such experimental evaluations. The paper further suggests that the most meaningful results are obtained by conducting experiments with real subjects expressing the emotions as spontaneous reactions.

Keywords: Affective computing, emotion recognition, humanoid robot, Human-Robot-Interaction (HRI), social robots.

Digital Object Identifier (DOI): doi.org/10.5281/zenodo.1316752

Procedia APA BibTeX Chicago EndNote Harvard JSON MLA RIS XML ISO 690 PDF Downloads 1291

References:


[1] Mayer JD, Salovey P, Caruso DR, Mayer Salovey Caruso Emotional Intelligence Test (MSCEIT) users manual, 2.0. Toronto, Canada: MHS Publishers, 2002.
[2] J. Liu, A. Harris, N. Kanwisher, Stages of processing in face perception: an meg study, Nat Neurosci, vol. 5, pp. 910916, 09 2002.
[3] Klaus R. Scherer, Mayer Salovey Caruso Emotional Intelligence Test (MSCEIT) users manual, v. 44, 695-729 Social Science Information, 2005.
[4] E. Kennedy-Moore, J. Watson, Expressing Emotion: Myths, Realities, and Therapeutic Strategies. Emotions and social behavior, Guilford Press, 1999.
[5] P. Ekman, Universals and Cultural Differences in Facial Expressions of Emotion. University of Nebraska Press, 1971.
[6] P. Ekman, W. V. Friesen, and J. C. Hager, The facial action coding system, in Research Nexus eBook, 2002.
[7] P. Lucey, J. F. Cohn, T. Kanade, J. M. Saragih, Z. Ambadar, and I. A. Matthews, The extended cohn-kanade dataset (CK+): A complete dataset for action unit and emotion-specified expression, in IEEE Conference on Computer Vision and Pattern Recognition, CVPR Workshops 2010, San Francisco, CA, USA, 13-18 June, 2010, pp. 94–101, 2010.
[8] Challenges in representation learning: Facial expression recognition challenge, https://www.kaggle.com/c/challenges-in-representationlearning- facial-expression-recognition-challenge (Last accessed: in April 2018)
[9] M. J. Lyons, S. Akamatsu, M. Kamachi, and J. Gyoba, Coding facial expressions with gabor wavelets in 3rd International Conference on Face & Gesture Recognition (FG’98), Nara, Japan, pp. 200–205, 1998.
[10] The Third Emotion Recognition in The Wild (EmotiW) 2015 Grand Challenge, http://cs.anu.edu.au/few/emotiw2015.html (Last accessed: April 2018)
[11] Z. Yu and C. Zhang, Image based static facial expression recognition with multiple deep network learning in ICMI’ 15 Proceedings of the 2015 ACM on International Conference on Multimodal Interaction, Seattle, WA, USA, pp. 435–442, 2015.
[12] B.-K. Kim, J. Roh, S.-Y. Dong, and S.-Y. Lee, Hierarchical committee of deep convolutional neural networks for robust facial expression recognition in J. Multimodal User Interfaces, vol. 10, no. 2, pp. 173–189, 2016.
[13] G. Levi and T. Hassner, Emotion recognition in the wild via convolutional neural networks and mapped binary patterns in ICMI’ 15 Proceedings of the 2015 ACM on International Conference on Multimodal Interaction, Seattle, WA, USA, pp. 503–510, 2015.
[14] Y. Lv, Z. Feng, and C. Xu, Facial expression recognition via deep learning, in SMARTCOMP, IEEE Computer Society, pp. 303–308, 2014.
[15] T. Ahsan, T. Jabid, and U.-P. Chong, Facial expression recognition using local transitional pattern on gabor filtered facial images, IETE Technical Review, vol. 30, no. 1, pp. 47–52, 2013.
[16] A. Gudi, Recognizing semantic features in faces using deep learning, CoRR, vol. abs/1512.00743, 2015.
[17] E. Correa, A. Jonker, M. Ozo, and R. Stolk, Emotion recognition using deep convolutional neural networks., 2016.
[18] M. Hashemian, H. Moradi, and M. S. Mirian, How is his/her mood: A question that a companion robot may be able to answer, in Social Robotics: 8th International Conference, ICSR 2016, Kansas City, MO, USA, November 1-3, 2016 Proceedings (A. Agah, J.-J. Cabibihan, A. M. Howard, M. A. Salichs, and H. He, eds.), pp. 274–284, Springer International Publishing, 2016.
[19] M. M. A. de Graaf, S. Ben Allouch, and J. A. G. M. van Dijk, What makes robots social?: A user’s perspective on characteristics for social human-robot interaction, in Proceedings of Social Robotics: 7th International Conference, ICSR 2015, Paris, France, pp. 184–193, Springer International Publishing, 2015.
[20] A. Meghdari, M. Alemi, A. G. Pour, and A. Taheri, Spontaneous human-robot emotional interaction through facial expressions, in Social Robotics: 8th International Conference, ICSR 2016, Kansas City, MO, USA, November 1-3, 2016 Proceedings (A. Agah, J.-J. Cabibihan, A. M. Howard, M. A. Salichs, and H. He, eds.), (Cham), pp. 351–361, Springer International Publishing, 2016.
[21] U. Hess and R. E. Kleck, Differentiating emotion elicited and deliberate emotional facial expressions, European Journal of Social Psychology, vol. 20, no. 5, pp. 369–385, 1990.
[22] M. Hirose, T. Takenaka, H. Gomi and N. Ozawa, Humanoid robot, Journal of the Robotics Society of Japan, vol. 15, no. 7, pp. 983–985, 1997.
[23] K. Hirai, M. Hirose, Y. Haikawa and T. Takenaka, The Honda humanoid robot: development and future perspective, Industrial Robot: An International Journal, vol. 26, no. 4, pp. 260–266, 1999.
[24] P. Ekman, J.C. Hager, W.V. Friesen, The symmetry of emotional and deliberate facial actions, Psychophysiology, 18: 101-106, 1981.
[25] A. Schaefer, F. Nils, X. Sanchez, and P. Philippot, Assessing the effectiveness of a large database of emotion-eliciting films: A new tool for emotion researchers, Cognition and Emotion, vol. 24, no. 7, pp. 1153–1172, 2010.
[26] Aldebaran (Softbank Robotics), Pepper robot, https://www.ald.softbankrobotics.com/en/robots/pepper (Last accessed: April 2018)
[27] M. Abadi, P. Barham, J. Chen, Z. Chen, A. Davis, J. Dean, M. Devin, S. Ghemawat, G. Irving, M. Isard, M. Kudlur, J. Levenberg, R. Monga, S. Moore, D. G. Murray, B. Steiner, P. Tucker, V. Vasudevan, P. Warden, M. Wicke, Y. Yu, and X. Zheng, Tensorflow: A system for large-scale machine learning in 12th USENIX Symposium on Operating Systems Design and Implementation (OSDI 16), pp. 265–283, 2016.
[28] J. Deng, W. Dong, R. Socher, L.-J. Li, K. Li and L. Fei-Fei, ImageNet: A Large-Scale Hierarchical Image Database in IEEE Computer Vision and Pattern Recognition (CVPR), 2009.
[29] Softbank Robotics, ALMood Module, http://doc.aldebaran.com/2-4/naoqi/core/almood.html (Last accessed: April 2018)
[30] OMRON Corporation, Facial Expression Estimation Technology, https://www.omron.com/media/press/2012/10/e1023.html (Last accessed: April 2018)
[31] Google Inc., Cloud Vision API, https://cloud.google.com/vision/ (Last accessed: April 2018)
[32] Microsoft Corporation, Emotion API, https://azure.microsoft.com/en-us/services/cognitive-services/emotion/ (Last accessed: April 2018)
[33] Kairos AR, Inc.,Human Analytics, https://www.kairos.com/features (Last accessed: April 2018)