Multi-channel Time Series Decomposition Network For Generalizable Sensor-Based Activity Recognition
- URL: http://arxiv.org/abs/2406.16872v1
- Date: Thu, 28 Mar 2024 12:54:06 GMT
- Title: Multi-channel Time Series Decomposition Network For Generalizable Sensor-Based Activity Recognition
- Authors: Jianguo Pan, Zhengxin Hu, Lingdun Zhang, Xia Cai,
- Abstract summary: This paper proposes a new method, Multi-channel Time Series Decomposition Network (MTSDNet)
It decomposes the original signal into a combination of multiple components and trigonometric functions by the trainable parameterized temporal decomposition.
It shows the advantages in predicting accuracy and stability of our method compared with other competing strategies.
- Score: 2.024925013349319
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Sensor-based human activity recognition is important in daily scenarios such as smart healthcare and homes due to its non-intrusive privacy and low cost advantages, but the problem of out-of-domain generalization caused by differences in focusing individuals and operating environments can lead to significant accuracy degradation on cross-person behavior recognition due to the inconsistent distributions of training and test data. To address the above problems, this paper proposes a new method, Multi-channel Time Series Decomposition Network (MTSDNet). Firstly, MTSDNet decomposes the original signal into a combination of multiple polynomials and trigonometric functions by the trainable parameterized temporal decomposition to learn the low-rank representation of the original signal for improving the extraterritorial generalization ability of the model. Then, the different components obtained by the decomposition are classified layer by layer and the layer attention is used to aggregate components to obtain the final classification result. Extensive evaluation on DSADS, OPPORTUNITY, PAMAP2, UCIHAR and UniMib public datasets shows the advantages in predicting accuracy and stability of our method compared with other competing strategies, including the state-of-the-art ones. And the visualization is conducted to reveal MTSDNet's interpretability and layer-by-layer characteristics.
Related papers
- Multi-Source and Test-Time Domain Adaptation on Multivariate Signals using Spatio-Temporal Monge Alignment [59.75420353684495]
Machine learning applications on signals such as computer vision or biomedical data often face challenges due to the variability that exists across hardware devices or session recordings.
In this work, we propose Spatio-Temporal Monge Alignment (STMA) to mitigate these variabilities.
We show that STMA leads to significant and consistent performance gains between datasets acquired with very different settings.
arXiv Detail & Related papers (2024-07-19T13:33:38Z) - Multi-stage feature decorrelation constraints for improving CNN
classification performance [14.09469656684143]
This article proposes a multi-stage feature decorrelation loss (MFD Loss) for CNN.
MFD Loss refines effective features and eliminates information redundancy by constraining the correlation of features at all stages.
Compared with the single Softmax Loss supervised learning, the experiments on several commonly used datasets on several typical CNNs prove that the classification performance of Softmax Loss+MFD Loss is significantly better.
arXiv Detail & Related papers (2023-08-24T16:00:01Z) - DIVERSIFY: A General Framework for Time Series Out-of-distribution
Detection and Generalization [58.704753031608625]
Time series is one of the most challenging modalities in machine learning research.
OOD detection and generalization on time series tend to suffer due to its non-stationary property.
We propose DIVERSIFY, a framework for OOD detection and generalization on dynamic distributions of time series.
arXiv Detail & Related papers (2023-08-04T12:27:11Z) - Coupled Attention Networks for Multivariate Time Series Anomaly
Detection [10.620044922371177]
We propose a coupled attention-based neural network framework (CAN) for anomaly detection in multivariate time series data.
To capture inter-sensor relationships and temporal dependencies, a convolutional neural network based on the global-local graph is integrated with a temporal self-attention module.
arXiv Detail & Related papers (2023-06-12T13:42:56Z) - UMSNet: An Universal Multi-sensor Network for Human Activity Recognition [10.952666953066542]
This paper proposes a universal multi-sensor network (UMSNet) for human activity recognition.
In particular, we propose a new lightweight sensor residual block (called LSR block), which improves the performance.
Our framework has a clear structure and can be directly applied to various types of multi-modal Time Series Classification tasks.
arXiv Detail & Related papers (2022-05-24T03:29:54Z) - Calibrated Feature Decomposition for Generalizable Person
Re-Identification [82.64133819313186]
Calibrated Feature Decomposition (CFD) module focuses on improving the generalization capacity for person re-identification.
A calibrated-and-standardized Batch normalization (CSBN) is designed to learn calibrated person representation.
arXiv Detail & Related papers (2021-11-27T17:12:43Z) - Learnable Multi-level Frequency Decomposition and Hierarchical Attention
Mechanism for Generalized Face Presentation Attack Detection [7.324459578044212]
Face presentation attack detection (PAD) is attracting a lot of attention and playing a key role in securing face recognition systems.
We propose a dual-stream convolution neural networks (CNNs) framework to deal with unseen scenarios.
We successfully prove the design of our proposed PAD solution in a step-wise ablation study.
arXiv Detail & Related papers (2021-09-16T13:06:43Z) - Adversarial Feature Augmentation and Normalization for Visual
Recognition [109.6834687220478]
Recent advances in computer vision take advantage of adversarial data augmentation to ameliorate the generalization ability of classification models.
Here, we present an effective and efficient alternative that advocates adversarial augmentation on intermediate feature embeddings.
We validate the proposed approach across diverse visual recognition tasks with representative backbone networks.
arXiv Detail & Related papers (2021-03-22T20:36:34Z) - Semantics-aware Adaptive Knowledge Distillation for Sensor-to-Vision
Action Recognition [131.6328804788164]
We propose a framework, named Semantics-aware Adaptive Knowledge Distillation Networks (SAKDN), to enhance action recognition in vision-sensor modality (videos)
The SAKDN uses multiple wearable-sensors as teacher modalities and uses RGB videos as student modality.
arXiv Detail & Related papers (2020-09-01T03:38:31Z) - Deep Phase Correlation for End-to-End Heterogeneous Sensor Measurements
Matching [12.93459392278491]
We present an end-to-end deep phase correlation network (DPCN) to match heterogeneous sensor measurements.
The primary component is a differentiable correlation-based estimator that back-propagates the pose error to learnable feature extractors.
With the interpretable modeling, the network is light-weighted and promising for better generalization.
arXiv Detail & Related papers (2020-08-21T13:42:25Z) - A Transductive Multi-Head Model for Cross-Domain Few-Shot Learning [72.30054522048553]
We present a new method, Transductive Multi-Head Few-Shot learning (TMHFS), to address the Cross-Domain Few-Shot Learning challenge.
The proposed methods greatly outperform the strong baseline, fine-tuning, on four different target domains.
arXiv Detail & Related papers (2020-06-08T02:39:59Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.