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2024 | OriginalPaper | Buchkapitel

Smart Video Analysis of Hazard Situation Using CNN Model

verfasst von : M. Iyyappan, R. Chinnaiyan, Mumal Singh, Harshal Gupta, B. Ashwin

Erschienen in: Evolution in Signal Processing and Telecommunication Networks

Verlag: Springer Nature Singapore

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Abstract

Intelligent video analysis depends on the identification of uncommon events in the video being viewed. A complex element to represent movement and appearance is required for several methods of finding an uncommon event. An exceptionally potent and successful method that might fully satisfy the goals of a neural network model for features delivery of high resolution images. In this paper, local confusion can be found by following convolutional neural network (CNN) features over time. Combining visual flow and CNN’s temporary models allows us to see the sense of location disorientation. The front mask is used to increase the accuracy of the visual flow computation and the visual flow intensity. It is based on the conventional method of visual flow. The technique was rigorously examined using benchmark datasets and video for real-world monitoring. The primary goal of the suggested system is to offer a reliable method of spotting unexpected events in real-time photos that may be used for surveillance. An automated monitoring system that may use neural network techniques to detect and warn different types of security cameras in order to improve image quality and capture efficiency. The suggested system’s major objective is to offer a novel method of tracking and identifying events in low-resolution images without the need of any high-resolution approaches.

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Metadaten
Titel
Smart Video Analysis of Hazard Situation Using CNN Model
verfasst von
M. Iyyappan
R. Chinnaiyan
Mumal Singh
Harshal Gupta
B. Ashwin
Copyright-Jahr
2024
Verlag
Springer Nature Singapore
DOI
https://doi.org/10.1007/978-981-97-0644-0_27

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