Hybrid Deep Learning for Crime Anomaly Detection: Integrating CNN and LSTM for Predictive Analysis of Urban Safety
Metadatos
Afficher la notice complèteAuteur
Sivakumaran, AR.; Maheswari, Yetukuri Gouthami; Kalyani, Tangirala M N S; Renusri, TelakapallyEditorial
Universidad de Granada
Materia
Urban safety Crime anomaly detection Deep learning Convolutional Neural Networks (CNN) Long Short-Term Memory (LSTM) Predictive analysis
Date
2024-12-01Referencia bibliográfica
AR. Sivakumaran, Yetukuri Gouthami Maheswari, Tangirala M N S Kalyani, Telakapally Renusri (2024). Hybrid Deep Learning for Crime Anomaly Detection: Integrating CNN and LSTM for Predictive Analysis of Urban SafetyVol.15(5).346-354. DOI:10.47750/jett.2024.15.05.34
Résumé
Urban safety has become a growing concern as crime rates rise, necessitating the development of effective systems for crime anomaly detection. Traditional crime monitoring systems often rely on manual observation, static surveillance mechanisms, or rule-based systems, which are limited in scalability, adaptability, and efficiency. Hybrid deep learning approaches, combining Convolutional
Neural Networks (CNN) and Long Short-Term Memory (LSTM) networks, offer a transformative solution for predictive analysis of urban safety. CNN excels at extracting spatial features from video footage and images, while LSTM processes temporal sequences, making this integration particularly suited for real-time anomaly detection.