A Multi-Vehicle Tracking Method for Video-SAR with Reliable Foreground-Background Motion Feature Compensation

Jianzhi Hong, Taoyang Wang*, Yuqi Han, Weicheng Di, Tiancheng Dong

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

Most of the existing Video Synthetic Aperture Radar (ViSAR) vehicle multi-target tracking methods only perform inter-frame association based on the idea of appearance modeling, and are not closely integrated with the ViSAR moving target imaging characteristics, resulting in limited accuracy improvement of existing multi-target tracking methods. ViSAR moving targets have the characteristics of individual similarity, time-varying appearance and background pseudo-motion, which have a great impact on tracking performance. In this regard, we propose a multi-vehicle tracking method for ViSAR with reliable foreground-background motion feature compensation (RFBMFC). Specifically, in order to improve the distinguishability of individual features, the spatial-temporal semantic sparse alignment (STSSA) module with intra-frame and inter-frame context key information aggregation and interaction is constructed in the feature extraction stage, which can generate more accurate dense optical flow to enhance the detection and association of foreground targets. In order to improve the tracking continuity of foreground targets with time-varying appearance, the shadow-observation-state mining (SOSM) module is designed in the inter-frame association stage, which can cluster targets under different appearance states and adaptively restore lost target trajectories. In addition, the background motion fast compensation (BMFC) module is designed, which can learn background motion estimation and correct the trajectory prediction error of foreground targets in an end-to-end self-supervised manner to improve the multi-target tracking accuracy under camera motion. Tests on datasets captured by Sandia National Laboratories (SNL) and Beijing Institute of Radio Measurement (BIRM) show that RFBMFC outperforms many representative multi-target tracking methods. Compared with the suboptimal method, RFBMFC improves the multi-object-tracking accuracy (MOTA) by 1.10% on the SNL data, and by 5.00% on the BIRM data, verifying the effectiveness of RFBMFC.

Original languageEnglish
JournalIEEE Transactions on Geoscience and Remote Sensing
DOIs
Publication statusAccepted/In press - 2025

Keywords

  • Background Motion Fast Compensation (BMFC)
  • Multi-Target Tracking (MTT)
  • Shadow Observation State Mining (SOSM)
  • Spatial-Temporal Semantic Sparse Alignment (STSSA)
  • Video Synthetic Aperture Radar (ViSAR)

Fingerprint

Dive into the research topics of 'A Multi-Vehicle Tracking Method for Video-SAR with Reliable Foreground-Background Motion Feature Compensation'. Together they form a unique fingerprint.

Cite this