Multivariate time series classification supports applications from wearable sensing to biomedical monitoring and demands models that can capture both short-term patterns and longer-range temporal dependencies. Despite recent advances, Transformer and CNN models often remain computationally heavy and rely on many parameters. This work presents PRISM(Per-channel Resolution Informed Symmetric Module), a lightweight fully convolutional classifier. Operating in a channel-independent manner, in its early stage it applies a set of multi-resolution symmetric convolutional filters. This symmetry enforces structural constraints inspired by linear-phase FIR filters from classical signal processing, effectively halving the number of learnable parameters within the initial layers while preserving the full receptive field. Across the diverse UEA multivariate time-series archive as well as specific benchmarks in human activity recognition, sleep staging, and biomedical signals, PRISM matches or outperforms state-of-the-art CNN and Transformer models while using significantly fewer parameters and markedly lower computational cost. By bringing a principled signal processing prior into a modern neural architecture, PRISM offers an effective and computationally economical solution for multivariate time series classification.
翻译:多元时间序列分类支持从可穿戴传感到生物医学监测的多种应用,并要求模型能够捕捉短期模式和长期时间依赖性。尽管近期取得了进展,Transformer和CNN模型通常仍计算量较大且依赖大量参数。本文提出PRISM(Per-channel Resolution Informed Symmetric Module),一种轻量级全卷积分类器。该模型以通道独立方式运行,在早期阶段应用一组多分辨率对称卷积滤波器。这种对称性受到经典信号处理中线性相位FIR滤波器的启发,强制施加结构约束,有效将初始层可学习参数数量减半,同时保留完整的感受野。在多样化的UEA多元时间序列档案库以及人类活动识别、睡眠分期和生物医学信号等特定基准测试中,PRISM在显著减少参数数量和显著降低计算成本的同时,匹配或超越了最先进的CNN和Transformer模型。通过将原则性信号处理先验引入现代神经架构,PRISM为多元时间序列分类提供了一种高效且计算经济的解决方案。