Wavelet Dynamic Selection Network for Inertial Sensor Signal Enhancement
- URL: http://arxiv.org/abs/2401.05416v1
- Date: Fri, 29 Dec 2023 07:44:06 GMT
- Title: Wavelet Dynamic Selection Network for Inertial Sensor Signal Enhancement
- Authors: Yifeng Wang, Yi Zhao
- Abstract summary: Inertial sensors are widely used in various portable devices.
Wavelet dynamic selection network (WDSNet) intelligently selects appropriate wavelet basis for variable inertial signals.
WDSNet, as a weakly-supervised method, achieves the state-of-the-art performance of all the compared fully-supervised methods.
- Score: 11.793803540713695
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: As attitude and motion sensing components, inertial sensors are widely used
in various portable devices. But the severe errors of inertial sensors restrain
their function, especially the trajectory recovery and semantic recognition. As
a mainstream signal processing method, wavelet is hailed as the mathematical
microscope of signal due to the plentiful and diverse wavelet basis functions.
However, complicated noise types and application scenarios of inertial sensors
make selecting wavelet basis perplexing. To this end, we propose a wavelet
dynamic selection network (WDSNet), which intelligently selects the appropriate
wavelet basis for variable inertial signals. In addition, existing deep
learning architectures excel at extracting features from input data but neglect
to learn the characteristics of target categories, which is essential to
enhance the category awareness capability, thereby improving the selection of
wavelet basis. Therefore, we propose a category representation mechanism (CRM),
which enables the network to extract and represent category features without
increasing trainable parameters. Furthermore, CRM transforms the common fully
connected network into category representations, which provide closer
supervision to the feature extractor than the far and trivial one-hot
classification labels. We call this process of imposing interpretability on a
network and using it to supervise the feature extractor the feature supervision
mechanism, and its effectiveness is demonstrated experimentally and
theoretically in this paper. The enhanced inertial signal can perform
impracticable tasks with regard to the original signal, such as trajectory
reconstruction. Both quantitative and visual results show that WDSNet
outperforms the existing methods. Remarkably, WDSNet, as a weakly-supervised
method, achieves the state-of-the-art performance of all the compared
fully-supervised methods.
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