分支:卷积神经网络在线集成跟踪的正则化

Bohyung Han, Jack Sim, Hartwig Adam
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引用次数: 144

摘要

我们提出了一种非常简单但有效的卷积神经网络(cnn)正则化技术,称为BranchOut,用于在线集成跟踪。我们的算法采用CNN进行目标表示,该算法具有常见的卷积层,但具有完全连接层的多个分支。为了更好的正则化,在需要更新目标外观模型时,随机选择CNN中的分支子集进行在线学习。每个分支可能有不同数量的层来维护目标外观的可变抽象级别。基于多层次目标表示的BranchOut算法使我们能够学习具有多样性的鲁棒目标外观模型,有效地解决了视觉跟踪问题中的各种挑战。该算法在标准跟踪基准中进行了评估,即使没有对外部跟踪序列进行额外的预训练,也显示出最先进的性能。
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BranchOut: Regularization for Online Ensemble Tracking with Convolutional Neural Networks
We propose an extremely simple but effective regularization technique of convolutional neural networks (CNNs), referred to as BranchOut, for online ensemble tracking. Our algorithm employs a CNN for target representation, which has a common convolutional layers but has multiple branches of fully connected layers. For better regularization, a subset of branches in the CNN are selected randomly for online learning whenever target appearance models need to be updated. Each branch may have a different number of layers to maintain variable abstraction levels of target appearances. BranchOut with multi-level target representation allows us to learn robust target appearance models with diversity and handle various challenges in visual tracking problem effectively. The proposed algorithm is evaluated in standard tracking benchmarks and shows the state-of-the-art performance even without additional pretraining on external tracking sequences.
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