JCSE, vol. 17, no. 4, pp.207-215, December, 2023
DOI: http://dx.doi.org/10.5626/JCSE.2023.17.4.207
Handling Imbalanced Data Using a Cascade Model for Image-Based Human Action Recognition
Wahyono, Suprapto, Adam Rezky, Nur Rokhman, and Kang-Hyun Jo Department of Computer Science and Electronics, Universitas Gadjah Mada, Yogyakarta, Indonesia
Department of Electrical Engineering, University of Ulsan, Ulsan, Korea
Abstract: Human action recognition plays a crucial role in intelligent monitoring systems, which are based on analyzing the possibility
of anomalous events related to human behavior, such as theft, fights, and other incidents. However, by definition,
anomalous events occur somewhat infrequently, thus leading to small and unbalanced data compared to data on other
events. Such a data imbalance causes the human action recognition model to fail to produce optimal accuracy. To overcome
the problem of imbalanced data, the typical methods used are oversampling and undersampling. However, these
two methods are not considered to be very effective, because they cause the loss of a significant amount of information
or deviations from reality. Therefore, the current paper proposes a cascade modeling strategy to address data imbalance
problems, particularly in the case of human action recognition. The proposed strategy consists of several steps: preprocessing,
feature extraction, modeling, and evaluation. The BAR dataset experiment found that the cascade model outperformed
the other examined methods with an accuracy of 56.38%. However, there is still potential for further improvement
through continued research.
Keyword:
Human action recognition; Imbalanced data; Cascade modeling; HOG feature extraction; Support vector machine
Full Paper: 99 Downloads, 624 View
|