2022
DOI: 10.1155/2022/8313471
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Real-Time Multitarget Tracking for Panoramic Video Based on Dual Neural Networks for Multisensor Information Fusion

Abstract: A multitarget real-time tracking system for panoramic video with multisensor information fusion dual neural networks is studied and implemented by combining dual neural networks, fused geometric features, and deep learning-based target real-time tracking algorithms. The motion model of multisensor information fusion is analyzed, the dual neural network perturbation model is introduced, and the state variables of the system are determined. Combined with the data structure model of multisensor information fusion… Show more

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Cited by 2 publications
(1 citation statement)
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“…Further, a neighborhood search mechanism is implemented for tracking connected with the data association method. The neural network adoption is witnessed in Lin's [40] work, where tracking is carried out for multiple targets. The implementation is carried out considering the integration of real-time tracking of the target using deep learning, combined geometric features, and a dual neural network.…”
Section: B Remote Sensing-based Vodt Approachesmentioning
confidence: 99%
“…Further, a neighborhood search mechanism is implemented for tracking connected with the data association method. The neural network adoption is witnessed in Lin's [40] work, where tracking is carried out for multiple targets. The implementation is carried out considering the integration of real-time tracking of the target using deep learning, combined geometric features, and a dual neural network.…”
Section: B Remote Sensing-based Vodt Approachesmentioning
confidence: 99%