Moyo, B.Mutshafa, Livhuwani2026-06-172026-06-172026-05-19Mutshafa, L. 2026. An Intelligent Surveillance System Using Deep Facial Expression Recognition. . .https://univendspace.univen.ac.za/handle/11602/3201M.Sc. in e-ScienceDepartment of Mathematical and Computational SciencesSurveillance systems are critical tools for maintaining security, enhancing public safety, and safeguarding assets in diverse settings, from public spaces to private facilities. Despite their importance, these systems often face challenges that require human oversight. Recent studies have explored deep learning techniques to address such challenges, primarily focusing on face recognition and anomaly detection in static images. This study proposes a deep learning approach for detecting and interpreting facial expressions in dynamic images to enhance surveillance applications. The methodology involved a comprehensive literature review, dataset preprocessing, development of deep learning models, and rigorous model evaluation. A fine-tuned MobileNetV2 and a hybrid MobileNetV2–LSTM models were designed to capture both spatial and temporal features of facial expressions. The models were trained on benchmark datasets, including the Amsterdam Dynamic Facial Expression Set (ADFES) and the Chinese Face Dataset with Dynamic Expressions, and evaluated using accuracy, precision, recall, and F1-score metrics. Results demonstrated that the MobileNetV2–LSTM model significantly outperformed the standard MobileNetV2, achieving 95% accuracy, 95% precision, 95% recall, and 95% F1-score, highlighting the advantages of temporal modeling. The models maintained high computational efficiency, achieving 43.09 frames per second and a per-frame inference time of 0.0232 seconds, indicating strong real-time feasibility. This study contributes to intelligent surveillance by providing a highly reliable facial expression recognition framework for dynamic scenarios, with future work focusing on real-time deployment, expanded datasets with diverse ethnicities, and enhanced robustness under challenging surveillance conditions.1 online resource (viii, 73 leaves): color illustrationsenUniversity of VendaADFESChinese datasetUCTDDeep learningDynamic imagesSurveillance systemsAn Intelligent Surveillance System Using Deep Facial Expression RecognitionDissertationMutshafa L. An Intelligent Surveillance System Using Deep Facial Expression Recognition. []. , 2026 [cited yyyy month dd]. Available from:Mutshafa, L. (2026). <i>An Intelligent Surveillance System Using Deep Facial Expression Recognition</i>. (). . Retrieved fromMutshafa, Livhuwani. <i>"An Intelligent Surveillance System Using Deep Facial Expression Recognition."</i> ., , 2026.TY - Dissertation AU - Mutshafa, Livhuwani AB - Surveillance systems are critical tools for maintaining security, enhancing public safety, and safeguarding assets in diverse settings, from public spaces to private facilities. Despite their importance, these systems often face challenges that require human oversight. Recent studies have explored deep learning techniques to address such challenges, primarily focusing on face recognition and anomaly detection in static images. This study proposes a deep learning approach for detecting and interpreting facial expressions in dynamic images to enhance surveillance applications. The methodology involved a comprehensive literature review, dataset preprocessing, development of deep learning models, and rigorous model evaluation. A fine-tuned MobileNetV2 and a hybrid MobileNetV2–LSTM models were designed to capture both spatial and temporal features of facial expressions. The models were trained on benchmark datasets, including the Amsterdam Dynamic Facial Expression Set (ADFES) and the Chinese Face Dataset with Dynamic Expressions, and evaluated using accuracy, precision, recall, and F1-score metrics. Results demonstrated that the MobileNetV2–LSTM model significantly outperformed the standard MobileNetV2, achieving 95% accuracy, 95% precision, 95% recall, and 95% F1-score, highlighting the advantages of temporal modeling. The models maintained high computational efficiency, achieving 43.09 frames per second and a per-frame inference time of 0.0232 seconds, indicating strong real-time feasibility. This study contributes to intelligent surveillance by providing a highly reliable facial expression recognition framework for dynamic scenarios, with future work focusing on real-time deployment, expanded datasets with diverse ethnicities, and enhanced robustness under challenging surveillance conditions. DA - 2026-05-19 DB - ResearchSpace DP - Univen KW - ADFES KW - Chinese dataset KW - Deep learning KW - Dynamic images KW - Surveillance systems LK - https://univendspace.univen.ac.za PY - 2026 T1 - An Intelligent Surveillance System Using Deep Facial Expression Recognition TI - An Intelligent Surveillance System Using Deep Facial Expression Recognition UR - ER -