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Moving Object Detection for Complex Scenes by Merging BG Modeling and Deep Learning Method
Journal
Journal of Artificial Intelligence and Soft Computing Research
ISSN
2449-6499
Date Issued
2023-06-01
Author(s)
Chih-Yang Lin
Han-Yi Huang
Wei-Yang Lin
Kahlil Muchtar
Nadhila Nurdin
DOI
https://sciendo.com/article/10.2478/jaiscr-2023-0012
Abstract
<jats:title>Abstract</jats:title>
<jats:p>In recent years, many studies have attempted to use deep learning for moving object detection. Some research also combines object detection methods with traditional background modeling. However, this approach may run into some problems with parameter settings and weight imbalances. In order to solve the aforementioned problems, this paper proposes a new way to combine ViBe and Faster-RCNN for moving object detection. To be more specific, our approach is to confine the candidate boxes to only retain the area containing moving objects through traditional background modeling. Furthermore, in order to make the detection able to more accurately filter out the static object, the probability of each region proposal then being retained. In this paper, we compare four famous methods, namely GMM and ViBe for the traditional methods, and DeepBS and SFEN for the deep learning-based methods. The result of the experiment shows that the proposed method has the best overall performance score among all methods. The proposed method is also robust to the dynamic background and environmental changes and is able to separate stationary objects from moving objects. Especially the overall <jats:italic>F</jats:italic>-measure with the CDNET 2014 dataset (like in the dynamic background and intermittent object motion cases) was 0,8572.</jats:p>
<jats:p>In recent years, many studies have attempted to use deep learning for moving object detection. Some research also combines object detection methods with traditional background modeling. However, this approach may run into some problems with parameter settings and weight imbalances. In order to solve the aforementioned problems, this paper proposes a new way to combine ViBe and Faster-RCNN for moving object detection. To be more specific, our approach is to confine the candidate boxes to only retain the area containing moving objects through traditional background modeling. Furthermore, in order to make the detection able to more accurately filter out the static object, the probability of each region proposal then being retained. In this paper, we compare four famous methods, namely GMM and ViBe for the traditional methods, and DeepBS and SFEN for the deep learning-based methods. The result of the experiment shows that the proposed method has the best overall performance score among all methods. The proposed method is also robust to the dynamic background and environmental changes and is able to separate stationary objects from moving objects. Especially the overall <jats:italic>F</jats:italic>-measure with the CDNET 2014 dataset (like in the dynamic background and intermittent object motion cases) was 0,8572.</jats:p>
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