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Learning deep features for multiple object tracking by using a multi-task learning strategy

机译:通过使用多任务学习策略来学习用于多对象跟踪的深层功能

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Model-free object tracking is still challenging because of the limited prior knowledge and the unexpected variation of the target object. In this paper, we propose a feature learning algorithm for model-free multiple object tracking. First, we pre-learn generic features invariant to diverse motion transformations from auxiliary video data by using a deep network of anto-encoder. Then, we adapt the pre-learned features according to multiple target objects respectively in a multi-task learning manner. We treat the feature adaptation for each target object as one single task. We simultaneously learn the common feature shared by all target objects and the individual feature of each object. Experimental results demonstrate that our feature learning algorithm can significantly improve multiple object tracking performance.
机译:由于有限的先验知识和目标对象的意外变化,因此无模型对象跟踪仍然具有挑战性。在本文中,我们提出了一种用于无模型多目标跟踪的特征学习算法。首先,我们通过使用深度编码器网络,从辅助视频数据中预先学习不依赖于各种运动转换的通用特征。然后,我们以多任务学习的方式分别根据多个目标对象调整预学习特征。我们将针对每个目标对象的特征适配视为一项任务。我们同时学习所有目标对象共享的共同特征以及每个对象的个体特征。实验结果表明,我们的特征学习算法可以显着提高多目标跟踪性能。

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