اختيار الموقع            تسجيل دخول
 

تسجيل دخول للنظام
  كود المستخدم
  كلمة السر
نسيت كلمة السر؟



Mansoura journal for computer and information sciences /
 Mansoura journal for computer and information sciences /
  تفاصيل البحث
 
[9002998.] رقم البحث : 9002998 -
Video Analysis For Human Action Recognition Using Deep Convolutional Neural Networks /
تخصص البحث :
  Mansoura journal for computer and information sciences / / Vol.14 - No.1
  Nehal N.Mostafa ( nihalnabil1990@ gmail.com - ) - مؤلف رئيسي
  Mohammed F. Alrahmawy ( mrahmawy@mans.edu.eg - )
  Omaima Nomair ( omnomir@yahoo.com - )
  Video analysis, Human action recognition, Deep learning, machine learning, video analysis, Image segmentation, feature extraction, Kalman filter, human action, Convolutional Neural Network.
  In the last few years, human action recognition potential applications have been studied in many fields such as robotics, human computer interaction, and video surveillance systems and it has been evaluated as an active research area. This paper presents a recognition system using deep learning to recognize and identify human actions from video input.
The proposed system has been fine-tuned by partial training and dropout of the classification layer of Alexnet and replacing it by another one that use SVM. The performance of the network is boosted by using key frames that were extracted via applying Kalman filter during dataset augmentation. The proposed system resulted in oromising performance compared to the state of the art approaches. The classification accuracy reached 92.35%.


 







Powered by Future Library Software.All rights reserved © CITC - Mansoura University. Sponsored by Mansoura University Privacy Policy