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Spatial and temporal learning representation for end-to-end recording device identification

机译:端到端录制设备识别的空间和时间学习表示

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摘要

Deep learning techniques have achieved specific results in recording device source identification. The recording device source features include spatial information and certain temporal information. However, most recording device source identification methods based on deep learning only use spatial representation learning from recording device source features, which cannot make full use of recording device source information. Therefore, in this paper, to fully explore the spatial information and temporal information of recording device source, we propose a new method for recording device source identification based on the fusion of spatial feature information and temporal feature information by using an end-to-end framework. From a feature perspective, we designed two kinds of networks to extract recording device source spatial and temporal information. Afterward, we use the attention mechanism to adaptively assign the weight of spatial information and temporal information to obtain fusion features. From a model perspective, our model uses an end-to-end framework to learn the deep representation from spatial feature and temporal feature and train using deep and shallow loss to joint optimize our network. This method is compared with our previous work and baseline system. The results show that the proposed method is better than our previous work and baseline system under general conditions.
机译:深度学习技术已经实现了记录设备源识别的具体结果。记录设备源特征包括空间信息和某些时间信息。然而,基于深度学习的大多数记录设备源识别方法仅使用空间表示从记录设备源特征中使用空间表示,这不能充分利用记录设备源信息。因此,在本文中,为了充分探索记录设备源的空间信息和时间信息,我们提出了一种基于空间特征信息和时间特征信息的融合来记录设备源识别的新方法,通过使用端到端框架。从特征透视中,我们设计了两种网络以提取记录设备源空间和时间信息。之后,我们使用注意机制自适应地分配空间信息和时间信息以获得融合功能。从模型的角度来看,我们的模型使用端到端框架来学习空间特征和时间特征的深度表示,并使用深浅损耗来培训,以联合优化我们的网络。将该方法与我们以前的工作和基线系统进行比较。结果表明,在一般条件下,该方法比我们以前的工作和基线系统更好。

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