作者
Kyaw Kyaw Htike, Othman O Khalifa, Huda Adibah Mohd Ramli, Mohammad AM Abushariah
发表日期
2014/4/29
研讨会论文
The third international conference on e-technologies and networks for development (ICeND2014)
页码范围
79-82
出版商
IEEE
简介
The Human activities recognition has become a research area of great interest as it has many potential applications; including automated surveillance, sign language interpretation and human-computer interfaces. In recent years, an extensive research has been conducted in this field. This paper presents a part of a novel a Human posture recognition system for video surveillance using one static camera. The training and testing stages were implemented using four different classifiers which are K Means, Fuzzy C Means, Multilayer Perceptron Self-Organizing Maps and Feedforward Neural networks. The accuracy recognition of used classifiers is calculated. The results indicate that Self-Organizing Maps shows the highest recognition rate. Moreover, results show that supervised learning classifiers tend to perform better than unsupervised classifiers for the case of human posture recognition. Furthermore, for each …
引用总数
20162017201820192020202120222023202424664162072
学术搜索中的文章
KK Htike, OO Khalifa, HAM Ramli, MAM Abushariah - The third international conference on e-technologies …, 2014