Human activity recognition for video surveillance using neural network /

Human activity recognition considered as one of the most effective technique in video surveillance due to it is the promising application in computer vision and signaling such as home care system, sign language, computer interaction and human machine. The main goal of video surveillance is to discov...

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Bibliographic Details
Main Author: Karm Allah, Mohanad Babiker Mohamed Osman (Author)
Format: Thesis
Language:English
Published: Kuala Lumpur : Kulliyyah of Engineering, International Islamic University Malaysia, 2017
Subjects:
Online Access:http://studentrepo.iium.edu.my/handle/123456789/4858
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040 |a UIAM  |b eng  |e rda 
041 |a eng 
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050 0 0 |a TK7882.P7 
100 1 |a Karm Allah, Mohanad Babiker Mohamed Osman,  |e author 
245 1 0 |a Human activity recognition for video surveillance using neural network /  |c by Mohanad Babiker Mohamed Osman Karm Allah 
264 1 |a Kuala Lumpur :  |b Kulliyyah of Engineering, International Islamic University Malaysia,  |c 2017 
300 |a xiii, 75 leaves :  |b illustrations ;  |c 30cm. 
336 |2 rdacontent  |a text 
347 |2 rdaft  |a text file  |b PDF 
502 |a Thesis (MSCE)--International Islamic University Malaysia, 2017. 
504 |a Includes bibliographical references (leaves 68-71). 
520 |a Human activity recognition considered as one of the most effective technique in video surveillance due to it is the promising application in computer vision and signaling such as home care system, sign language, computer interaction and human machine. The main goal of video surveillance is to discover the moving object and track their activities within the visible zone of the camera, however in the video surveillances human behavior analysis is a complex task because of their constantly various appearances, human crowds in different clothes and environments. In this research, we produce a novel method for human activity recognition were developed. The designed system has four stages, collect the data, construct the neural network, training, and testing. Three scenarios used in this research. Scenario one built based on a simple and clear background in an indoor environment to recognize the activity of walking, sitting, boxing and hand waving. The recognition of these activities was analyzed based on the basic features of the bounding box. Scenario two is more complex because of using very similar activities with challenging background which is provided in KTH dataset video. The features extracted by using spatial temporal interest point (STIP), centroid, and bounding box. The third scenario assumed to ensure the reliability of the used features in scenario two. Finally, the result shows that the assumption of scenario one highly success to recognize the activity of human the overall recognition rate is 98% .moreover, the result proves that in order to design an efficient recognition system via a neural network the combination of STIP features with basic blob analysis features is recommended. The designed system has achieved accuracy 90% on the six similar activities. In scenario two and scenario three, the recognition rate was 89.9% on nine different activities. At the end, the features of STIP are preferable to recognize the human activity than the basic feathers of Blob analysis because of it is the capability to distinguish between the similar activities in an accurate manner. 
596 |a 1 
655 7 |a Theses, IIUM local 
690 |a Dissertations, Academic  |x Department of Electrical and Computer Engineering  |z IIUM 
710 2 |a International Islamic University Malaysia.  |b Department of Electrical and Computer Engineering 
856 4 |u http://studentrepo.iium.edu.my/handle/123456789/4858 
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