Facial emotion recognition using geometrical features based deeplearning techniques

dc.contributor.authorBonthu Kotaiah N
dc.date.accessioned2025-06-24T06:56:46Z
dc.date.available2025-06-24T06:56:46Z
dc.date.issued2023
dc.description.abstractIn recent years, intelligent emotion recognition is active research in computer vision to understand the dynamic communication between machines and humans. As a result, automatic emotion recognition allows the machine to assess and acquire the human emotional state to predict the intents based on the facial expression. Researchers mainly focus on speech features and body motions; identifying affect from facial expressions remains a less explored topic. Hence, this paper proposes novel approach for intelligent facial emotion recognition using optimal geometrical features from facial landmarks using VGG-19s (FCNN). Here, we utilize Haarcascade to detect the subject face and determine the distance and angle measurements. The entire process is to classify the facial ex-pressions based on extracting relevant features with the normalized angle and distance measures. The experimental analysis shows high accuracy on the MUG dataset of 94.22% and 86.45% on GEMEP datasets, respectively
dc.identifier.citationMazher Iqbal, J.L.; Senthil Kumar, M.; Mishra Geetishree ; Asha, G.R.; Saritha, Karthik, A; J.V.N.;BonthuKotaiah, N. (2023). Facial emotion recognition using geometrical features based deep learning techniques,International Journal of Computers Communications&Control, 18(4), 4644, 2023.https://doi.org/10.15837/ijccc.2023.4.4644
dc.identifier.urihttp://ctuap.ndl.gov.in/handle/123456789/49
dc.titleFacial emotion recognition using geometrical features based deeplearning techniques
dc.typeArticle
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