中文

Generalization Theory for Through-the-Wall Radar Human Activity Recognition

信息论 2026-07-09 v1 机器学习 信号处理

摘要

Through-the-wall radar (TWR) human activity recognition (HAR) is important for non-line-of-sight indoor sensing, security monitoring, and emergency rescue. However, structured distribution shifts caused by person variation, observation-view variation, and wall-condition variation severely degrade recognition generalization, while the origin of the target-domain error still lacks a rigorous theoretical explanation. To address this issue, a generalization-analysis framework for TWR HAR is proposed in this paper. First, models for indoor human kinematics, TWR echo generation, radar image formation, feature representation, and bounded-weight neural networks are established within a unified source-to-target learning formulation. Then, the source risk, target risk, empirical risk, and admissible physical domain descriptor are defined, and a unified target-domain generalization bound is derived. Next, the structured shift term is decomposed into cross-person, cross-view, and cross-wall components, and the bound-tightening effects of physical low-dimensional representations, multi-source training, and parameter-space coverage are analyzed. Simulated and measured experiments jointly support the resulting theoretical analysis and illustrate its application value.

引用

@article{arxiv.2607.08144,
  title  = {Generalization Theory for Through-the-Wall Radar Human Activity Recognition},
  author = {Weicheng Gao},
  journal= {arXiv preprint arXiv:2607.08144},
  year   = {2026}
}

备注

38 pages, 10 figures, 10 tables