Artificial Emotional Intelligence: Conventional and deep learning approach

被引:15
作者
Kumar, Himanshu [1 ]
Martin, A. [1 ]
机构
[1] Cent Univ Tamil Nadu, Dept Comp Sci, Thiruvarur 610005, Tamil Nadu, India
关键词
Artificial emotional intelligence; Automated decision-making; Machine learning; Deep learning emotion detection; Neural Network; Facial recognition Pattern; Facial Emotion Recognition; FACIAL EXPRESSION RECOGNITION; FACE RECOGNITION; FEATURES; EXTRACTION; SPEECH; SYSTEM; MODEL;
D O I
10.1016/j.eswa.2022.118651
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Artificial intelligence substantially changes the global world, influencing technologies, machines, and objects in various encouraging aspects nowadays; emotion recognition is also one of them. This paper describes a signif-icant contribution of emotion recognition by applying conventional and deep learning methodologies by focusing on limitations and demanding challenges. It also intends to explore the comparative study on recently applied machine learning and deep learning-based algorithms, which provide the best accuracy rates to recognize emotions. This Comparative study consists of different feature extractions, classifier models, and datasets that recognize the emotions within a facial image, speech, and non-verbal communication and describes their features and principles for future research work. We have shown the balancing accuracy, and efficiency of using hybrid classification techniques briefly explained in Speech emotion recognition. This review study would be more beneficial in enhancing automated decision-making services in various customer-based industries and observing patients in the health care sector, industries, public sectors, private sectors, and production firms.
引用
收藏
页数:20
相关论文
共 50 条
[21]   Deep Learning and Multimodal Artificial Intelligence in Orthopaedic Surgery [J].
Bozzo, Anthony ;
Tsui, James M. G. ;
Bhatnagar, Sahir ;
Forsberg, Jonathan .
JOURNAL OF THE AMERICAN ACADEMY OF ORTHOPAEDIC SURGEONS, 2024, 32 (11) :e523-e532
[22]   Role of artificial intelligence, machine learning and deep learning models in corneal disorders - A narrative review [J].
Gurnani, B. ;
Kaur, K. ;
Lalgudi, V. G. ;
Kundu, G. ;
Mimouni, M. ;
Liu, H. ;
Jhanji, V. ;
Prakash, G. ;
Roy, A. S. ;
Shetty, R. ;
Gurav, J. S. .
JOURNAL FRANCAIS D OPHTALMOLOGIE, 2024, 47 (07)
[23]   Artificial Intelligence-What to Expect From Machine Learning and Deep Learning in Hernia Surgery [J].
Vogel, Robert ;
Mueck, Bjorn .
JOURNAL OF ABDOMINAL WALL SURGERY, 2024, 3
[24]   The Role of Artificial Intelligence in Diagnosing Malignant Tumors [J].
Ahmad, Shmmon ;
Khan, Zafar ;
Khan, Monish ;
Aijaz, Moh ;
Thakur, Shivani ;
Kamboj, Anjoo .
EURASIAN JOURNAL OF MEDICINE AND ONCOLOGY, 2024, 8 (03) :281-294
[25]   Towards the use of artificial intelligence deep learning networks for detection of archaeological sites [J].
Karamitrou, Alexandra ;
Sturt, Fraser ;
Bogiatzis, Petros ;
Beresford-Jones, David .
SURFACE TOPOGRAPHY-METROLOGY AND PROPERTIES, 2022, 10 (04)
[27]   The use of artificial intelligence, machine learning and deep learning in oncologic histopathology [J].
Sultan, Ahmed S. ;
Elgharib, Mohamed A. ;
Tavares, Tiffany ;
Jessri, Maryam ;
Basile, John R. .
JOURNAL OF ORAL PATHOLOGY & MEDICINE, 2020, 49 (09) :849-856
[28]   Artificial intelligence, machine learning and deep learning in advanced robotics, a review [J].
Soori M. ;
Arezoo B. ;
Dastres R. .
Cognitive Robotics, 2023, 3 :54-70
[29]   Artificial Intelligence in Optical Communications: From Machine Learning to Deep Learning [J].
Wang, Danshi ;
Zhang, Min .
FRONTIERS IN COMMUNICATIONS AND NETWORKS, 2021, 2
[30]   Artificial intelligence and machine learning [J].
Kuehl, Niklas ;
Schemmer, Max ;
Goutier, Marc ;
Satzger, Gerhard .
ELECTRONIC MARKETS, 2022, 32 (04) :2235-2244