研究目的
To address the issue of properly selecting and fusing appropriate features for visual tracking in the presence of variations such as illumination, occlusion, and pose.
研究成果
The proposed method outperforms other feature fusion-based trackers and sparse representation-based trackers under appearance variations such as occlusion, scale, illumination, and poses. Future work will focus on developing more efficient methods for real-time application and extending the optimization model to other computer vision problems.
研究不足
The proposed method is sparsity-based, making real-time tracking challenging. Future work includes reducing computational complexity for practical applications.