基于序列特征增强的跨模态音频文本检索

Fuhu Song, Jifeng Hu, Che Wang, Jiao Huang, Haowen Zhang, Yi Wang
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引用次数: 0

摘要

跨模态音频-文本检索的目标是检索目标音频片段(文本描述),它应该与给定的文本(音频)查询相关。这是一项具有挑战性的任务,因为它需要学习两种不同模态的综合特征表示,并将它们统一到一个共同的嵌入空间中。然而,大多数现有的跨模态音频-文本检索方法没有明确地学习音频特征中的顺序表示。此外,他们直接使用全连接的神经网络将不同的模态转换到公共空间的方法不利于序列特征。本文提出了一种基于强化学习和特征融合的序列特征增强框架,用于增强跨模态特征的序列特征。首先,我们采用强化学习来探索听觉和文本特征中的有效序列特征。然后,应用循环融合模块作为特征增强组件,将异构特征投影到公共空间中。在两个流行的数据集上进行了广泛的实验:AudioCaps和Clotho。结果表明,我们的方法比以前的最先进的方法有了显著的改进。
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Cross-Modal Audio-Text Retrieval via Sequential Feature Augmentation
The goal of cross-modal audio-text retrieval is to retrieve the target audio clips (textual descriptions), which should be relevant to a given textual (audial) query. It is a challenging task because it necessitates learning comprehensive feature representations for two different modalities and unifying them into a common embedding space. However, most existing cross-modal audio-text retrieval approaches do not explicitly learn the sequential representation in audio features. Moreover, their method of directly employing a fully connected neural network to transform the different modalities into a common space is detrimental to sequential features. In this paper, we introduce a sequential feature augmentation framework based on reinforcement learning and feature fusion to enhance the sequential feature for cross-modal features. First, we adopt reinforcement learning to explore effective sequential features in audial and textual features. Then, a recurrent fusion module is applied as a feature enhancement component to project heterogeneous features into a common space. Extensive experiments are conducted on two prevalent datasets: the AudioCaps and the Clotho. The results demonstrate that our method gains a significant improvement over previous state-of-the-art methods.
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