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Video anomaly detection in 10 years: a survey and outlook

Video anomaly detection (VAD) holds immense importance across diverse domains such as surveillance, healthcare, and environmental monitoring. While numerous surveys focus on conventional VAD methods, they often lack depth in… Click to show full abstract

Video anomaly detection (VAD) holds immense importance across diverse domains such as surveillance, healthcare, and environmental monitoring. While numerous surveys focus on conventional VAD methods, they often lack depth in exploring specific approaches and emerging trends. This survey explores deep learning-based VAD, expanding beyond traditional supervised training paradigms to encompass emerging weakly supervised, self-supervised, semi-supervised, and unsupervised approaches. A prominent feature of this review is the investigation of core challenges within the VAD paradigms, including large-scale datasets, feature extraction, learning methods, loss functions, regularization, and anomaly score prediction. Moreover, this review investigates vision-language models (VLMs) as potent feature extractors for VAD. VLMs integrate visual data with textual descriptions from videos, enabling a nuanced understanding of scenes crucial for anomaly detection. By addressing these challenges and proposing future research directions, this review aims to foster the development of robust and efficient VAD systems leveraging the capabilities of VLMs for enhanced anomaly detection in complex real-world scenarios. This comprehensive analysis seeks to bridge existing knowledge gaps, provide researchers with valuable insights, and contribute to shaping the future of VAD research.

Keywords: detection; video anomaly; survey; anomaly detection; vad; detection years

Journal Title: Neural Computing and Applications
Year Published: 2024

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