Learning Diverse Models for End-to-End Ensemble Tracking | IEEE Journals & Magazine | IEEE Xplore

Learning Diverse Models for End-to-End Ensemble Tracking


Abstract:

In visual tracking, how to effectively model the target appearance using limited prior information remains an open problem. In this paper, we leverage an ensemble of dive...Show More

Abstract:

In visual tracking, how to effectively model the target appearance using limited prior information remains an open problem. In this paper, we leverage an ensemble of diverse models to learn manifold representations for robust object tracking. The proposed ensemble framework includes a shared backbone network for efficient feature extraction and multiple head networks for independent predictions. Trained by the shared data within an identical structure, the mutually correlated head models heavily hinder the potential of ensemble learning. To shrink the representational overlaps among multiple models while encouraging the diversity of individual predictions, we propose the model diversity and response diversity regularization terms during training. By fusing these distinctive prediction results via a fusion module, the tracking variance caused by the distractor objects can be largely restrained. Our whole framework is end-to-end trained in a data-driven manner, avoiding the heuristic designs of multiple base models and fusion strategies. The proposed method achieves state-of-the-art results on seven challenging benchmarks while operating in real-time.
Published in: IEEE Transactions on Image Processing ( Volume: 30)
Page(s): 2220 - 2231
Date of Publication: 20 January 2021

ISSN Information:

PubMed ID: 33471758

Funding Agency:


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