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Robust Deep Multi-modal Learning Based on Gated Information Fusion Network

机译:基于门控信息融合网络的鲁棒深度多模态学习

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The goal of multi-modal learning is to use complementary information on the relevant task provided by the multiple modalities to achieve reliable and robust performance. Recently, deep learning has led significant improvement in multi-modal learning by allowing for fusing high level features obtained at intermediate layers of the deep neural network. This paper addresses a problem of designing robust deep multimodal learning architecture in the presence of the modalities degraded in quality. We introduce deep fusion architecture for object detection which processes each modality using the separate convolutional neural network (CNN) and constructs the joint feature maps by combining the intermediate features obtained by the CNNs. In order to facilitate the robustness to the degraded modalities, we employ the gated information fusion (GIF) network which weights the contribution from each modality according to the input feature maps to be fused. The combining weights are determined by applying the convolutional layers followed by the sigmoid function to the concatenated intermediate feature maps. The whole network including the CNN backbone and GIF is trained in an end-to-end fashion. Our experiments show that the proposed GIF network offers the additional architectural flexibility to achieve the robust performance in handling some degraded modalities.
机译:多模式学习的目标是使用关于由多种模式提供的相关任务的补充信息,以实现可靠而强大的性能。最近,深度学习通过融合在深度神经网络的中间层获得的高级功能,已经在多模式学习中取得了重大进步。本文解决了存在质量下降的模态时设计健壮的深度多模态学习体系结构的问题。我们介绍了用于对象检测的深度融合架构,该架构使用单独的卷积神经网络(CNN)处理每个模态,并通过结合CNN获得的中间特征来构造联合特征图。为了增强对降级模态的鲁棒性,我们采用了门控信息融合(GIF)网络,该网络根据要融合的输入特征图对每种模态的贡献进行加权。合并权重是通过将卷积层和S型函数应用于级联的中间特征图来确定的。包括CNN骨干网和GIF在内的整个网络都以端到端的方式进行培训。我们的实验表明,提出的GIF网络提供了额外的体系结构灵活性,可在处理某些降级模式时获得强大的性能。

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