Hierarchical Convolutional Features for Visual Tracking
Visual representations are of great importance for object tracking. Numerous hand-crafted features have been used to represent the target appear-ance such as subspace representation [24] and color his-tograms [37]. The recent years have witnessed significant
Feature, Tracking, Visual, Representation, Hierarchical, Convolutional, Visual representation, Hierarchical convolutional features for visual tracking
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