Traditional multiple instance learning (MIL) tracking utilizes self-learning procedures in tracking systems. Once an object gets lost in tracking
the interior classifier easily degenerates. To alleviate this problem
we propose an improved multiple instance learning tracking based on online feature selection (MILOFS). First
a very sparse random matrix is constructed to facilitate the feature initial process. With this matrix
the intrinsic attributes of the features projected from a high-dimension image can be preserved. Then
the loss function of a bag model is built with the Fisher linear discriminant model. The discriminative model of the bag is formed directly at the instance level with the response of each instance. Finally
the gradient descend rule is incorporated into the online boosting framework
and gradient boosting is employed to construct the selection strategy for strong classifiers. Comparison experiments under different scenarios reveal that the center location errors of Online AdaBoost(OAB)
Weighted Multiple Instance Learning(WMIL) and Multiple Instance Learning with Online Feature Selection(MILOFS) are 36
23
24
and 13 pixels
respectively. Hence
the proposed method is robust and accurate regardless of changes in the illumination
occlusion condition
and target appearance in the outer environment. An improved MILOFS is proposed in this work. The proposed method integrated with a gradient boosting framework and online feature selection strategy effectively addresses the issue of classifier degeneration in traditional MIL tracking.