2023
DOI: 10.1049/2023/6620581
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Generative Target Tracking Method with Improved Generative Adversarial Network

Yongping Yang,
Hongshun Chen

Abstract: Multitarget tracking is prone to target loss, identity exchange, and jumping problems in the context of complex background, target occlusion, target scale, and pose transformation. In this paper, we proposed a target tracking algorithm based on the conditional adversarial generative twin networks, using the improved you only look once multitarget association algorithm to classify and detect the position of the target to be detected in the current frame, constructing a feature extraction model using generative … Show more

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