R-LRBPNet: A Lightweight SAR Image Oriented Ship Detection and Classification Method

Author:

Gao Gui1,Chen Yuhao1,Feng Zhuo1,Zhang Chuan1,Duan Dingfeng1,Li Hengchao1,Zhang Xi2

Affiliation:

1. Faculty of Geosciences and Environmental Engineering, Southwest Jiaotong University, Chengdu 611756, China

2. Laboratory of Marine Physics and Remote Sensing, First Institute of Oceanography, Ministry of Natural Resources, Qingdao 266061, China

Abstract

Synthetic Aperture Radar (SAR) has the advantage of continuous observation throughout the day and in all weather conditions, and is used in a wide range of military and civil applications. Among these, the detection of ships at sea is an important research topic. Ships in SAR images are characterized by dense alignment, an arbitrary orientation and multiple scales. The existing detection algorithms are unable to solve these problems effectively. To address these issues, A YOLOV8-based oriented ship detection and classification method using SAR imaging with lightweight receptor field feature convolution, bottleneck transformers and a probabilistic intersection-over-union network (R-LRBPNet) is proposed in this paper. First, a CSP bottleneck with two bottleneck transformer (C2fBT) modules based on bottleneck transformers is proposed; this is an improved feature fusion module that integrates the global spatial features of bottleneck transformers and the rich channel features of C2f. This effectively reduces the negative impact of densely arranged scenarios. Second, we propose an angle decoupling module. This module uses probabilistic intersection-over-union (ProbIoU) and distribution focal loss (DFL) methods to compute the rotated intersection-over-union (RIoU), which effectively alleviates the problem of angle regression and the imbalance between angle regression and other regression tasks. Third, the lightweight receptive field feature convolution (LRFConv) is designed to replace the conventional convolution in the neck. This module can dynamically adjust the receptive field according to the target scale and calculate the feature pixel weights based on the input feature map. Through this module, the network can efficiently extract details and important information about ships to improve the classification performance of the ship. We conducted extensive experiments on the complex scene SAR dataset SRSDD and SSDD+. The experimental results show that R-LRBPNet has only 6.8 MB of model memory, which can achieve 78.2% detection accuracy, 64.2% recall, a 70.51 F1-Score and 71.85% mAP on the SRSDD dataset.

Funder

National Nature Science Foundation of China

Innovation Team of the Ministry of Education of China

Innovation Group of Sichuan Natural Science Foundation

Fundamental Research Funds for the Central Universities

CAST Innovation Foundation

State Key Laboratory of Geo-Information Engineering

National Key Research and Development Program of China

Publisher

MDPI AG

Reference61 articles.

1. Oriented Ship Detection Based on Soft Thresholding and Context Information in SAR Images of Complex Scenes;Zhang;IEEE Trans. Geosci. Remote Sens.,2024

2. Scattering Characteristic-Aware Fully Polarized SAR Ship Detection Network Based on a Four-Component Decomposition Model;Gao;IEEE Trans. Geosci. Remote Sens.,2023

3. CFAR ship detection in polarimetric synthetic aperture radar images based on whitening filter;Liu;IEEE Trans. Geosci. Remote Sens.,2019

4. Automatic ship detection in SAR images using multi-scale heterogeneities and an a contrario decision;Huang;Remote Sens.,2015

5. Synthetic aperture radar ship detection using Haar-like features;Schwegmann;IEEE Geosci. Remote Sens. Lett.,2016

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