DocumentCode :
117467
Title :
Constructive, robust and adaptive OS-ELM in human action recognition
Author :
Budiman, Arif ; Fanany, M. Ivan ; Basaruddin, Chan
Author_Institution :
Fac. of Comput. Sci., Univ. of Indonesia, Depok, Indonesia
fYear :
2014
fDate :
28-30 Aug. 2014
Firstpage :
39
Lastpage :
45
Abstract :
We introduce a constructive, robust, and adaptive OS-ELM (Online Sequential Extreme Machine Learning) that combines learning strategies of Constructive Enhancement OSELM and Robust OS-ELM, and add adaptive capability to receive a new target class requirement during sequential learning and applied in human action recognition. The overall strategy is aimed to deal against parameters tuning and new requirements drift problem in the sequential learning process that commonly happened in human action recognition. Our proposed method has an automatic and systematic approach for determining input weight and bias value when the hidden nodes need to be increased to handle a larger training data size and to adjust the output weight when the new target class label is presented during sequential learning. We demonstrated the capability using 2013 Challenge on Multi modal Gesture Recognition open dataset (Chalearn 2013) with uni modal features (skeleton data) only. Our experiments using skeletons of upper body joints features with normalized euclidean distance and projection angle position coordinates to shoulder center and hip center, clustering analysis with k-means for pose based generation and Bag of Pose (BoP) for temporal sequential information. We developed the training sequence scenario to introduce the partial action classes in the initial training and the rest of training data with all classes in the next sequences to simulate the condition when the OS-ELM received new target class requirement drift. Our proposed method gives better accuracy plus adaptive capability compared with SUMO method which is the best uni modal method for chalearn data and still maintain a reasonably small computation time.
Keywords :
gesture recognition; image motion analysis; learning (artificial intelligence); pattern clustering; pose estimation; 2013 Challenge on Multimodal Gesture Recognition open dataset; BoP; Chalearn 2013; SUMO method; adaptive OS-ELM; bag-of-pose; constructive enhancement OSELM; human action recognition; k-means clustering analysis; new requirements drift problem; normalized Euclidean distance; online sequential extreme machine learning; pose based generation; projection angle position coordinates; robust OS-ELM; temporal sequential information; uni modal features; Joints; Learning systems; Robustness; Systematics; Training; Training data; adaptive learning; extreme learning machine (ELM); feedforward neural networks; online; sequential;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Industrial Automation, Information and Communications Technology (IAICT), 2014 International Conference on
Conference_Location :
Bali
Print_ISBN :
978-1-4799-4910-6
Type :
conf
DOI :
10.1109/IAICT.2014.6922113
Filename :
6922113
Link To Document :
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