论文标题
T-Wavenet:基于传感器的时间序列分析的树结构小波神经网络
T-WaveNet: Tree-Structured Wavelet Neural Network for Sensor-Based Time Series Analysis
论文作者
论文摘要
基于传感器的时间序列分析是活动识别和脑部计算机界面等应用程序的重要任务。最近,用深神经网络(DNN)提取的功能比传统手工制作的功能更有效。但是,这些解决方案中的大多数仅依赖于网络来提取传感器数据中携带的特定于应用程序的信息。由于通常一小部分频率组件带有传感器数据的主要信息,我们提出了一种新型的树结构小波神经网络,用于传感器数据分析,即\ emph {t-wavenet}。要具体而言,对于T-Wavenet,我们首先对传感器数据进行功率谱分析,并将输入信号分解为各种频率子带。然后,我们构建一个树结构的网络,并使用基于可逆的神经网络(INN)的小波变换构建树上的每个节点(对应于频率子带)。通过这样做,T-Wavenet比现有的基于DNN的技术为传感器信息提供了更有效的表示,并且它在各种传感器数据集上实现了最先进的性能,包括用于活动识别的UCI-HAR,手势识别的机会,BCICIV2A,BCICIV2A的意图识别和NINAPRO DB1的肌肉运动识别。
Sensor-based time series analysis is an essential task for applications such as activity recognition and brain-computer interface. Recently, features extracted with deep neural networks (DNNs) are shown to be more effective than conventional hand-crafted ones. However, most of these solutions rely solely on the network to extract application-specific information carried in the sensor data. Motivated by the fact that usually a small subset of the frequency components carries the primary information for sensor data, we propose a novel tree-structured wavelet neural network for sensor data analysis, namely \emph{T-WaveNet}. To be specific, with T-WaveNet, we first conduct a power spectrum analysis for the sensor data and decompose the input signal into various frequency subbands accordingly. Then, we construct a tree-structured network, and each node on the tree (corresponding to a frequency subband) is built with an invertible neural network (INN) based wavelet transform. By doing so, T-WaveNet provides more effective representation for sensor information than existing DNN-based techniques, and it achieves state-of-the-art performance on various sensor datasets, including UCI-HAR for activity recognition, OPPORTUNITY for gesture recognition, BCICIV2a for intention recognition, and NinaPro DB1 for muscular movement recognition.