Title
Human posture recognition with the stochastic cognitive RAM network
Abstract
This paper examines a weightless neural network (WNN) for human posture recognition. Like all earlier weightless neural network models, the Cognitive RAM Network (CogRAM) learns in one pass through the data and due to its simplicity it can be fabricated in hardware. While it has shown good performance in earlier studies, it still suffers from the common problem of network saturation especially when it comes to high dimensional and poorly separated data in the feature space. Hence, we proposed the Stochastic CogRAM which has shown significant improvements when tested on the challenging human postures recognition problem. We also present some comparisons of the experimental results obtained from the popular K-Means clustering algorithm. Future research is outlined at the end of the paper.
Year
DOI
Venue
2012
10.1007/978-3-642-34500-5_62
ICONIP (5)
Keywords
Field
DocType
separated data,stochastic cognitive ram network,human posture recognition,challenging human postures recognition,weightless neural network,common problem,cognitive ram network,network saturation,weightless neural network model,earlier study,stochastic cogram,pattern recognition,computer vision
Feature vector,Computer science,Weightless neural networks,Time delay neural network,Weightless,Artificial intelligence,Cognition,Artificial neural network,Cluster analysis,Machine learning,Posture recognition
Conference
Volume
ISSN
Citations 
7667
0302-9743
0
PageRank 
References 
Authors
0.34
5
3
Name
Order
Citations
PageRank
Weng Kin Lai1547.98
Imran M. Khan201.35
George Coghill3425.30