AdaBoost Support Vector Machine Method for Human Activity Recognition

2021 International Conference on Artificial Intelligence and Big Data Analytics(2021)

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摘要
Human activity recognition research is being implemented more and more as technology advances in computer vision. Many fields require activity recognition technology, such as theft detection or online exam cheating detection. One method that is widely used is AdaBoost. This study proposes the AdaBoost Support Vector Machine Method, a combination of the AdaBoost Method and the Support Vector Machine. The evaluation uses datasets for human activity recognition and compares them with other machine learning algorithms. The results obtained indicate that the proposed method has the highest performance compared to the tested algorithms. The highest accuracy in this study was 96.06%. It shows that SVM as an AdaBoost component is proven to be able to improve the performance of AdaBoost.
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关键词
human activity recognition,AdaBoost,Support Vector Machine,computer vision
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