4.7 Article

Machine learning for video event recognition

期刊

INTEGRATED COMPUTER-AIDED ENGINEERING
卷 28, 期 3, 页码 309-332

出版社

IOS PRESS
DOI: 10.3233/ICA-210652

关键词

Machine learning; event recognition; video analysis; image processing; behaviour understanding

资金

  1. ONRG project Target Re-Association for Autonomous Agents (TRAAA) of the Department of Computer Science of Sapienza University [N62909-20-1-2075]
  2. MIUR under grant Departments of Excellence 2018-2022 of the Department of Computer Science of Sapienza University

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The spread of video sensor networks in both public and private areas has grown considerably in recent years. Smart algorithms for video content understanding are developed to support human operators in monitoring different activities by recognizing events in observed scenes. Events are classified as simple or complex based on whether subjects interact with each other.
In recent years, the spread of video sensor networks both in public and private areas has grown considerably. Smart algorithms for video semantic content understanding are increasingly developed to support human operators in monitoring different activities, by recognizing events that occur in the observed scene. With the term event, we refer to one or more actions performed by one or more subjects (e.g., people or vehicles) acting within the same observed area. When these actions are performed by subjects that do not interact with each other, the events are usually classified as simple. Instead, when any kind of interaction occurs among subjects, the involved events are typically classified as complex. This survey starts by providing the formal definitions of both scene and event, and the logical architecture for a generic event recognition system. Subsequently, it presents two taxonomies based on features and machine learning algorithms, respectively, which are used to describe the different approaches for the recognition of events within a video sequence. This paper also discusses key works of the current state-of-the-art of event recognition, providing the list of datasets used to evaluate the performance of reported methods for video content understanding.

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