Abstract:
In the visual object tracking via unmanned aerial vehicle (UAV), the correlation filtering (CF) is one of the mainstream methods for the reason that optimizing filters by...Show MoreMetadata
Abstract:
In the visual object tracking via unmanned aerial vehicle (UAV), the correlation filtering (CF) is one of the mainstream methods for the reason that optimizing filters by circulant samples facilitates the calculation. The prevalent discriminative CF (DCF) frameworks credited to a ridge regression model followed by various regularizations focus on regressing to a fixed Gaussian label, which may easily induce overfitting. To these concerns, we integrate the hinge-squared loss (HSL) of structured support vector machine (SVM) with the CF model so as to attain a dynamical label which regresses the difference between target and background samples and thus enhances the robustness in tracking. Moreover, we assume weighted channels to augment the discrimination of HSL, thus indicating it has as good extensibility as the ridge regression in usual CF frameworks. The proposed method channel-weighted structured CF (CWSCF) has achieved excellent performance compared with other methods in mainstream UAV tracking benchmarks.
Published in: IEEE Geoscience and Remote Sensing Letters ( Volume: 20)