CVLGDec 4, 2014

Metric Learning Driven Multi-Task Structured Output Optimization for Robust Keypoint Tracking

arXiv:1412.1574v123 citations
Originality Incremental advance
AI Analysis

This work addresses robust keypoint tracking for computer vision applications, representing an incremental improvement over existing methods.

The paper tackles the problem of keypoint-based object tracking by simultaneously modeling temporal coherence, spatial consistency, and discriminative features through a joint optimization framework, achieving improved tracking performance as demonstrated in experiments.

As an important and challenging problem in computer vision and graphics, keypoint-based object tracking is typically formulated in a spatio-temporal statistical learning framework. However, most existing keypoint trackers are incapable of effectively modeling and balancing the following three aspects in a simultaneous manner: temporal model coherence across frames, spatial model consistency within frames, and discriminative feature construction. To address this issue, we propose a robust keypoint tracker based on spatio-temporal multi-task structured output optimization driven by discriminative metric learning. Consequently, temporal model coherence is characterized by multi-task structured keypoint model learning over several adjacent frames, while spatial model consistency is modeled by solving a geometric verification based structured learning problem. Discriminative feature construction is enabled by metric learning to ensure the intra-class compactness and inter-class separability. Finally, the above three modules are simultaneously optimized in a joint learning scheme. Experimental results have demonstrated the effectiveness of our tracker.

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