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Object Tracking Algorithm Based on Accelerated Adaptive Spatial-Temporal Background Aware Correlation Filters |
LI Yangxiao1, WEI Fuyuan1, ZHOU Zhenghua1, ZHAO Jianwei1 |
1. Department of Applied Mathematics, College of Sciences, China Jiliang University, Hangzhou 310018 |
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Abstract Designing a robust tracking algorithm based on correlation filters is an important research direction in the target tracking. The information of background, space and time is significant for improving the tracking performance of the algorithm. Grounded on the background-aware tracking algorithm, an object tracking algorithm based on accelerated adaptive spatial-temporal background aware correlation filter is proposed by fusing the spatial information, temporal information and the adaptability of the spatial weight matrix. Then,the appearance optimization model is solved by the accelerated alternating direction method of multipliers to obtain the spatial weight matrix and the correlation filter to realize the adaptive tracking. The proposed tracking algorithm enhances the discrimination of the tracker for the object from the background with the background information, spatial information and the adaptive spatial weight. The problem of tracking drifting for the case of target occlusion is alleviated by the temporal-regularization term, and the solving process is speeded up by the accelerated alternating direction method of multipliers. Experiments illustrate that the proposed algorithm produces better tracking results in the cases of target occlusion and background interference.
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Received: 31 May 2021
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Fund:National Natural Science Foundation of China(No.61571410), Nature Science Foundation of Zhejiang Province(No.LY18F020018,LSY19F020001) |
Corresponding Authors:
ZHAO Jianwei, Ph.D., professor. Her research interests include intelligent computing and image processing.
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About author:: LI Yangxiao, master student. His research interests include intelligent computing and image processing. WEI Fuyuan, master student. His research interests include intelligent computing and image processing. ZHOU Zhenghua, Ph.D., associate professor. His research interests include intelligent computing and image processing. |
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