Chenglong LiXiang SunXiao WangLei ZhangJin Tang
This paper studies the problem of object tracking in challenging scenarios by leveraging multimodal visual data. We propose a grayscale-thermal object tracking method in Bayesian filtering framework based on multitask Laplacian sparse representation. Given one bounding box, we extract a set of overlapping local patches within it, and pursue the multitask joint sparse representation for grayscale and thermal modalities. Then, the representation coefficients of the two modalities are concatenated into a vector to represent the feature of the bounding box. Moreover, the similarity between each patch pair is deployed to refine their representation coefficients in the sparse representation, which can be formulated as the Laplacian sparse representation. We also incorporate the modal reliability into the Laplacian sparse representation to achieve an adaptive fusion of different source data. Experiments on two grayscale-thermal datasets suggest that the proposed approach outperforms both grayscale and grayscale-thermal tracking approaches.
Chenglong LiShiyi HuSihan GaoJin Tang
Chenglong LiHui ChengShiyi HuXiaobai LiuJin TangLiang Lin
Bin KangDong LiangWan DingHuiyu ZhouWei‐Ping Zhu
Wan DingBin KangQuan ZhouMin LinSuofei Zhang