UniPhyNet: A Unified Network For Multimodal Physiological Raw Signal Classification
- URL: http://arxiv.org/abs/2507.14163v1
- Date: Tue, 08 Jul 2025 07:13:45 GMT
- Title: UniPhyNet: A Unified Network For Multimodal Physiological Raw Signal Classification
- Authors: Renxiang Qiu, Raghavendra Selvan,
- Abstract summary: We present UniPhyNet, a novel neural network architecture to classify cognitive load using multimodal physiological data.<n>On the CL-Drive dataset, UniPhyNet improves raw signal classification accuracy from 70% to 80% (binary) and 62% to 74% (ternary)
- Score: 0.18416014644193066
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We present UniPhyNet, a novel neural network architecture to classify cognitive load using multimodal physiological data -- specifically EEG, ECG and EDA signals -- without the explicit need for extracting hand-crafted features. UniPhyNet integrates multiscale parallel convolutional blocks and ResNet-type blocks enhanced with channel block attention module to focus on the informative features while a bidirectional gated recurrent unit is used to capture temporal dependencies. This architecture processes and combines signals in both unimodal and multimodal configurations via intermediate fusion of learned feature maps. On the CL-Drive dataset, UniPhyNet improves raw signal classification accuracy from 70% to 80% (binary) and 62% to 74% (ternary), outperforming feature-based models, demonstrating its effectiveness as an end-to-end solution for real-world cognitive state monitoring.
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