Low-rank representation-based object tracking using multitask feature learning with joint sparsity (Q1722184)
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scientific article; zbMATH DE number 7021810
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Low-rank representation-based object tracking using multitask feature learning with joint sparsity |
scientific article; zbMATH DE number 7021810 |
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Low-rank representation-based object tracking using multitask feature learning with joint sparsity (English)
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14 February 2019
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Summary: We address object tracking problem as a multitask feature learning process based on low-rank representation of features with joint sparsity. We first select features with low-rank representation within a number of initial frames to obtain subspace basis. Next, the features represented by the low-rank and sparse property are learned using a modified joint sparsity-based multitask feature learning framework. Both the features and sparse errors are then optimally updated using a novel incremental alternating direction method. The low-rank minimization problem for learning multitask features can be achieved by a few sequences of efficient closed form update process. Since the proposed method attempts to perform the feature learning problem in both multitask and low-rank manner, it can not only reduce the dimension but also improve the tracking performance without drift. Experimental results demonstrate that the proposed method outperforms existing state-of-the-art tracking methods for tracking objects in challenging image sequences.
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0.91495913
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0.90577984
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