StreakNet-Arch: An Anti-Scattering Network-Based Architecture for Underwater Carrier LiDAR-Radar Imaging

  • Xuelong Li
  • , Hongjun An
  • , Haofei Zhao
  • , Guangying Li
  • , Bo Liu
  • , Xing Wang
  • , Guanghua Cheng
  • , Guojun Wu
  • , Zhe Sun

Research output: Contribution to journalArticlepeer-review

2 Scopus citations

Abstract

In this paper, we introduce StreakNet-Arch, a real time, end-to-end binary-classification framework based on our self-developed Underwater Carrier LiDAR-Radar (UCLR) that embeds Self-Attention and our novel Double Branch Cross Attention (DBC-Attention) to enhance scatter suppression. Under controlled water tank validation conditions, StreakNet-Arch with Self-Attention or DBC-Attention outperforms traditional bandpass filtering and achieves higher F1 scores than learning-based MP networks and CNNs at comparable model size and complexity. Real-time benchmarks on an NVIDIA RTX 3060 show a constant Average Imaging Time (54 to 84 ms) regardless of frame count, versus a linear increase (58 to 1,257 ms) for conventional methods. To facilitate further research, we contribute a publicly available streak-tube camera image dataset contains 2,695,168 real-world underwater 3D point cloud data. More importantly, we validate our UCLR system in a South China Sea trial, reaching an error of 46mm for 3D target at 1,000 m depth and 20 m range.

Original languageEnglish
Pages (from-to)4357-4370
Number of pages14
JournalIEEE Transactions on Image Processing
Volume34
DOIs
StatePublished - 2025
Externally publishedYes

Keywords

  • LiDAR-radar
  • Underwater laser imaging
  • attention mechanism
  • signal processing
  • streak-tube camera

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