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The Frontiers of Society, Science and Technology, 2020, 2(9); doi: 10.25236/FSST.2020.020909.

Multi Instance Deep Learning Target Tracking

Author(s)

Cheng Huaihui1, Zhang Shengbo2

Corresponding Author:
Cheng Huaihui
Affiliation(s)

1 Nanyang Technological University, Singapore 639798

2 Carnegie Mellon University, Pittsburgh, PA 15213, United States


Abstract

In order to solve the problem of low tracking accuracy caused by the lack of appearance model and motion model in multi instance tracking algorithm, this paper proposes a multi instance deep learning target tracking algorithm. In the original multi example tracking algorithm, the motion model only assumes that the motion of the object between frames will not exceed a certain range, which can not effectively reflect the motion state of the target. Particle filter algorithm is introduced to predict the target and improve the accuracy of tracking. The experimental results of different image sequences in complex environment show that the proposed algorithm has higher tracking accuracy and better robustness than other tracking algorithms.

Keywords

Target tracking, Multi example learning, Deep learning

Cite This Paper

Cheng Huaihui, Zhang Shengbo. Multi Instance Deep Learning Target Tracking. The Frontiers of Society, Science and Technology (2020) Vol. 2 Issue 9: 37-39. https://doi.org/10.25236/FSST.2020.020909.

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