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Automated daily human activity recognition for video surveillance using neural network | IEEE Conference Publication | IEEE Xplore

Automated daily human activity recognition for video surveillance using neural network


Abstract:

Surveillance video systems are gaining increasing attention in the field of computer vision due to its demands of users for the seek of security. It is promising to obser...Show More

Abstract:

Surveillance video systems are gaining increasing attention in the field of computer vision due to its demands of users for the seek of security. It is promising to observe the human movement and predict such kind of sense of movements. The need arises to develop a surveillance system that capable to overcome the shortcoming of depending on the human resource to stay monitoring, observing the normal and suspect event all the time without any absent mind and to facilitate the control of huge surveillance system network. In this paper, an intelligent human activity system recognition is developed. Series of digital image processing techniques were used in each stage of the proposed system, such as background subtraction, binarization, and morphological operation. A robust neural network was built based on the human activities features database, which was extracted from the frame sequences. Multi-layer feed forward perceptron network used to classify the activities model in the dataset. The classification results show a high performance in all of the stages of training, testing and validation. Finally, these results lead to achieving a promising performance in the activity recognition rate.
Date of Conference: 28-30 November 2017
Date Added to IEEE Xplore: 12 March 2018
ISBN Information:
Conference Location: Putrajaya, Malaysia

I. Introduction

The recognition and the analysis of the daily human activities is an attractive area for the researchers due to it is effectiveness and wide application in image processing, sign language, artificial intelligence, and human-computer interaction. Commonly, the target of video surveillance systems processing is to monitor the behavior and the activities of the human. Also, to observe any change in the movement of the human for the security and the administrative purposes [1] [2]. In video surveillance systems, there are three main types of systems: manual, semi-autonomous and fully autonomous [3].

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References

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