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Residual Transfer Learning for Multiple Object Tracking

机译:剩余转移学习的多目标跟踪

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摘要

To address the Multiple Object Tracking (MOT) challenge, we propose to enhance the tracklet appearance features, given by a Convolutional Neural Network (CNN), based on the Residual Transfer Learning (RTL) method. Considering that object classification and tracking are significantly different tasks at high level. And that traditional fine-tuning limits the possible variations in all the layers of the network since it changes the last convolutional layers. Beyond that, our proposed method provides more flexibility in terms of modelling the difference between these two tasks with a four-stage training. This transfer approach increases the feature performance compared to traditional CNN fine-tuning. Experiments on the MOT17 challenge show competitive results with the current state-of-the-art methods.
机译:为了解决多目标跟踪(MOT)的挑战,我们建议基于残差传递学习(RTL)方法增强卷积神经网络(CNN)赋予的小轨迹外观特征。考虑到对象分类和跟踪在高层上是显着不同的任务。传统的微调限制了网络所有层的可能变化,因为它改变了最后的卷积层。除此之外,我们提出的方法在通过四个阶段的训练来建模这两个任务之间的差异方面提供了更大的灵活性。与传统的CNN微调相比,这种传输方法提高了功能性能。在MOT17挑战赛上进行的实验表明,使用当前最先进的方法可获得有竞争力的结果。

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