用于视听零点学习的尖峰塔克融合变压器

Wenrui Li;Penghong Wang;Ruiqin Xiong;Xiaopeng Fan
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摘要

能有效编码时间序列的尖峰神经网络(SNN)在提取视听联合特征表征方面显示出巨大潜力。然而,将尖峰神经网络(二进制尖峰序列)与变换器(浮点序列)耦合以共同探索时间语义信息仍面临挑战。在本文中,我们介绍了一种用于视听零点学习(ZSL)的新型尖峰塔克融合变换器(STFT)。STFT 利用不同时间步长的时间和语义信息生成稳健的表征。引入时间步长因子(TSF)可动态合成后续推理信息。为了引导输入膜电位的形成并降低尖峰噪声,我们提出了全局-局部池化(GLP),它结合了最大池化和平均池化操作。此外,尖峰神经元的阈值会根据语义和时间线索进行动态调整。由于直接双线性模型中的参数数量增加,因此很难整合 SNN 和 Transformers 提取的时间和语义信息。为了解决这个问题,我们引入了时空-语义塔克融合模块,该模块可实现 SNN 和 Transformer 输出的多尺度融合,同时保持完整的二阶交互。我们的实验结果表明,所提出的方法在三个基准数据集上取得了最先进的性能。VGGSound、UCF101 和 ActivityNet 的谐波平均值(HM)分别提高了约 15.4%、3.9% 和 14.9%。
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Spiking Tucker Fusion Transformer for Audio-Visual Zero-Shot Learning
The spiking neural networks (SNNs) that efficiently encode temporal sequences have shown great potential in extracting audio-visual joint feature representations. However, coupling SNNs (binary spike sequences) with transformers (float-point sequences) to jointly explore the temporal-semantic information still facing challenges. In this paper, we introduce a novel Spiking Tucker Fusion Transformer (STFT) for audio-visual zero-shot learning (ZSL). The STFT leverage the temporal and semantic information from different time steps to generate robust representations. The time-step factor (TSF) is introduced to dynamically synthesis the subsequent inference information. To guide the formation of input membrane potentials and reduce the spike noise, we propose a global-local pooling (GLP) which combines the max and average pooling operations. Furthermore, the thresholds of the spiking neurons are dynamically adjusted based on semantic and temporal cues. Integrating the temporal and semantic information extracted by SNNs and Transformers are difficult due to the increased number of parameters in a straightforward bilinear model. To address this, we introduce a temporal-semantic Tucker fusion module, which achieves multi-scale fusion of SNN and Transformer outputs while maintaining full second-order interactions. Our experimental results demonstrate the effectiveness of the proposed approach in achieving state-of-the-art performance in three benchmark datasets. The harmonic mean (HM) improvement of VGGSound, UCF101 and ActivityNet are around 15.4%, 3.9%, and 14.9%, respectively.
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