Abstract
Object tracking through multiple cameras is a popular research topicin security and surveillance systems especially when human objects arethe target. However,occlusion is one of thechallenging problems for the tracking process. This paper proposes a multiple-camera-based cooperative tracking method to overcome the occlusion problem. The paper presents a newmodel for combining convolutional neural networks (CNNs), which allows the proposed method to learn the features with high discriminative power and geometrical independence.In the training phase,the CNNs are first pre-trained in each of the camera views, and a convolutional gating network (CGN) is simultaneously pre-trained to produce a weight for each CNN output. The CNNs are then transferred to the tracking task where thepre-trained parameters of theCNNs are re-trained by using the data from the tracking phase. The weights obtained from the CGN are used in order to fuse the features learnt by the CNNs and the resulting weighted combination of the features is employed to represent the objects. Finally, the particle filter is used in order to track objects. The experimental results showed the efficiency of the proposed method in this paper.
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CITATION STYLE
Feizi, A. (2019). Convolutional gating network for object tracking. International Journal of Engineering, Transactions A: Basics, 32(7), 931–939. https://doi.org/10.5829/ije.2019.32.07a.05
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