资源论文Semi-supervised On-Line Boosting for Robust Tracking*

Semi-supervised On-Line Boosting for Robust Tracking*

2020-03-30 | |  69 |   58 |   0

Abstract

Recently, on-line adaptation of binary classifiers for track- ing have been investigated. On-line learning allows for simple classifiers since only the current view of the ob ject from its surrounding background needs to be discriminiated. However, on-line adaption faces one key prob- lem: Each update of the tracker may introduce an error which, finally, can lead to tracking failure (drifting). The contribution of this paper is a novel on-line semi-supervised boosting method which significantly alleviates the drifting problem in tracking applications. This allows to limit the drifting problem while still staying adaptive to appearance changes. The main idea is to formulate the update process in a semi- supervised fashion as combined decision of a given prior and an on-line classifier. This comes without any parameter tuning. In the experiments, we demonstrate real-time tracking of our SemiBoost tracker on several challenging test sequences where our tracker outperforms other on-line tracking methods.

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