量子多模态对比学习框架

Chi-Sheng Chen, Aidan Hung-Wen Tsai, Sheng-Chieh Huang
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引用次数: 0

摘要

在本文中,我们提出了一种新颖的多模态对比学习框架,利用量子编码器整合脑电图(EEG)和图像数据。这一开创性尝试探索了量子编码器与传统多模态学习框架的整合。通过利用量子计算的独特特性,我们的方法增强了呈现学习能力,为同时分析时间序列和视觉信息提供了一个强大的框架。我们证明,量子编码器能有效捕捉脑电信号和图像特征中错综复杂的模式,促进跨模态对比学习的改进。这项工作为量子计算与多模态数据分析的整合开辟了新的途径,特别是在需要同时解释时间数据和视觉数据的应用中。
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Quantum Multimodal Contrastive Learning Framework
In this paper, we propose a novel framework for multimodal contrastive learning utilizing a quantum encoder to integrate EEG (electroencephalogram) and image data. This groundbreaking attempt explores the integration of quantum encoders within the traditional multimodal learning framework. By leveraging the unique properties of quantum computing, our method enhances the representation learning capabilities, providing a robust framework for analyzing time series and visual information concurrently. We demonstrate that the quantum encoder effectively captures intricate patterns within EEG signals and image features, facilitating improved contrastive learning across modalities. This work opens new avenues for integrating quantum computing with multimodal data analysis, particularly in applications requiring simultaneous interpretation of temporal and visual data.
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