1. What have the authors contributed in "Vision-based human action classification using adaptive boosting algorithm" ?
This paper addresses the human action recognition based on variation in body shape.. Here, the authors consider six classes of activities namely: walking, standing, bending, lying, squatting, and sitting.. In this paper, the authors proposed an efficient human action recognition scheme, which takes advantages of superior discrimination capacity of AdaBoost algorithm.. The authors provided comparisons of the proposed approach with state-of-the-art classifiers based on the neural network, K-nearest neighbor, support vector machine and naı̈ve Bayes and showed that they achieve better results in discriminating human gestures.
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2. What are the future works in "Vision-based human action classification using adaptive boosting algorithm" ?
The authors plan also to use automatic background 1558-1748 ( c ) 2018 IEEE.. Updating methods that can be more accurate than a simple average to further enhance the performance of the proposed approach for classifying human activities under a dynamical background.
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