研究目的
To present a tracking approach using an approximate least absolute deviation (LAD)-based multitask multiview sparse learning method to enjoy robustness of LAD and take advantage of multiple types of visual features, such as intensity, color, and texture.
研究成果
The proposed LAD-based robust multitask multiview sparse learning method for particle filter-based tracking exploits the underlying relationship shared by different views and different particles and captures outlier tasks. The method is effectively approximated by Nesterov’s smoothing method and efficiently solved by the accelerated proximal gradient. Experimental results demonstrate superior performance compared with several state-of-the-art trackers.
研究不足
The paper does not explicitly mention specific limitations, but potential areas for optimization could include handling very large pose transformations and improving performance on long-duration sequences where targets may move completely out of the frame and then reappear.