University of Leicester
Browse

Online Non-Negative Multi-Modality Feature Template Learning for RGB-Assisted Infrared Tracking

Download (16.34 MB)
Version 2 2020-05-05, 16:06
Version 1 2020-05-05, 16:05
journal contribution
posted on 2020-05-05, 16:06 authored by Xiangyuan Lan, Mang Ye, Rui Shao, Bineng Zhong, Deepak Kumar Jain, Huiyu Zhou
Infrared sensors have been deployed in many video surveillance systems because of the insensibility of their imaging procedure to some extreme conditions (e.g. low illumination condition, dim environment). To reduce human labor in video monitoring and perform intelligent infrared video understanding, an important issue we need to consider is how to locate the object of interest in consecutive video frames accurately. Therefore, developing a robust object tracking algorithm for infrared videos is necessary. However, the infrared information may not be reliable (e.g. thermal crossover), and appearance modeling with only the infrared modality may not be able to achieve good results. To address these issues, with the wide deployment of RGB-infrared camera systems, this paper proposes an infrared tracking framework in which information from RGB-modality will be exploited to assist the infrared object tracking. Specifically, within the tracking framework, in order to deal with the contaminated features caused by large appearance variations, an online non-negative feature template learning model is designed. The non-negative constraint enables the model to capture the local part-based characteristic of the target appearance. To ensure more important modality contribute more in appearance representation, an adaptive modality importance weight learning scheme is also incorporated in the proposed feature learning model. To guarantee the model optimality, an iterative optimization algorithm is derived. The experimental results on various RGB-infrared videos show the effectiveness of the proposed method.

Funding

This work was supported in part by the Hong Kong Baptist University Tier 1 Start-up Grant. The work of H. Zhou was supported in part by the UK EPSRC under Grant EP/N011074/1, in part by the Royal Society-Newton Advanced Fellowship under Grant NA160342, and in part by the European Union’s Horizon 2020 Research and Innovation Program under the Marie-Sklodowska-Curie Grant 720325. The work of B. Zhong was supported by the National Natural Science Foundation of China under Grant 61572205 and Grant 61802135. This work of D. K. Jain was supported in part by the Key Laboratory of Intelligent Air-Ground Cooperative Control for Universities in Chongqing and the Key Laboratory of Industrial IoT and Networked Control, Ministry of Education, College of Automation, Chongqing University of Posts and Telecommunications, Chongqing, China.

History

Citation

IEEE Access, 2019, ( Volume: 7 ) Page(s): 67761 - 67771

Version

  • VoR (Version of Record)

Published in

IEEE ACCESS

Volume

7

Pagination

67761 - 67771 (11)

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC

issn

2169-3536

eissn

2169-3536

Acceptance date

2019-04-07

Copyright date

2019

Available date

2019-05-14

Publisher version

https://ieeexplore.ieee.org/abstract/document/8713854

Language

English