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A Structurally Flexible Occupancy Network for 3-D Target Reconstruction Using 2-D SAR Images
by
Liang, Miaomiao
, Yu, Xiangchun
, Xie, Xiaochun
, Yu, Lingjuan
, Bi, Hui
, Hong, Wen
, Liu, Jianlong
in
2-D SAR image
/ Algorithms
/ Artificial satellites in remote sensing
/ complex-valued attention mechanism
/ complex-valued long short-term memory
/ Datasets
/ Deep learning
/ Geometry
/ Image quality
/ Image reconstruction
/ Long short-term memory
/ Mathematical functions
/ Modules
/ Neural networks
/ Radar imaging
/ structurally flexible occupancy network
/ Synthetic aperture radar
/ three-dimensional target reconstruction
/ Unmanned aerial vehicles
2025
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A Structurally Flexible Occupancy Network for 3-D Target Reconstruction Using 2-D SAR Images
by
Liang, Miaomiao
, Yu, Xiangchun
, Xie, Xiaochun
, Yu, Lingjuan
, Bi, Hui
, Hong, Wen
, Liu, Jianlong
in
2-D SAR image
/ Algorithms
/ Artificial satellites in remote sensing
/ complex-valued attention mechanism
/ complex-valued long short-term memory
/ Datasets
/ Deep learning
/ Geometry
/ Image quality
/ Image reconstruction
/ Long short-term memory
/ Mathematical functions
/ Modules
/ Neural networks
/ Radar imaging
/ structurally flexible occupancy network
/ Synthetic aperture radar
/ three-dimensional target reconstruction
/ Unmanned aerial vehicles
2025
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A Structurally Flexible Occupancy Network for 3-D Target Reconstruction Using 2-D SAR Images
by
Liang, Miaomiao
, Yu, Xiangchun
, Xie, Xiaochun
, Yu, Lingjuan
, Bi, Hui
, Hong, Wen
, Liu, Jianlong
in
2-D SAR image
/ Algorithms
/ Artificial satellites in remote sensing
/ complex-valued attention mechanism
/ complex-valued long short-term memory
/ Datasets
/ Deep learning
/ Geometry
/ Image quality
/ Image reconstruction
/ Long short-term memory
/ Mathematical functions
/ Modules
/ Neural networks
/ Radar imaging
/ structurally flexible occupancy network
/ Synthetic aperture radar
/ three-dimensional target reconstruction
/ Unmanned aerial vehicles
2025
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A Structurally Flexible Occupancy Network for 3-D Target Reconstruction Using 2-D SAR Images
Journal Article
A Structurally Flexible Occupancy Network for 3-D Target Reconstruction Using 2-D SAR Images
2025
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Overview
Driven by deep learning, three-dimensional (3-D) target reconstruction from two-dimensional (2-D) synthetic aperture radar (SAR) images has been developed. However, there is still room for improvement in the reconstruction quality. In this paper, we propose a structurally flexible occupancy network (SFONet) to achieve high-quality reconstruction of a 3-D target using one or more 2-D SAR images. The SFONet consists of a basic network and a pluggable module that allows it to switch between two input modes: one azimuthal image and multiple azimuthal images. Furthermore, the pluggable module is designed to include a complex-valued (CV) long short-term memory (LSTM) submodule and a CV attention submodule, where the former extracts structural features of the target from multiple azimuthal SAR images, and the latter fuses these features. When two input modes coexist, we also propose a two-stage training strategy. The basic network is trained in the first stage using one azimuthal SAR image as the input. In the second stage, the basic network trained in the first stage is fixed, and only the pluggable module is trained using multiple azimuthal SAR images as the input. Finally, we construct an experimental dataset containing 2-D SAR images and 3-D ground truth by utilizing the publicly available Gotcha echo dataset. Experimental results show that once the SFONet is trained, a 3-D target can be reconstructed using one or more azimuthal images, exhibiting higher quality than other deep learning-based 3-D reconstruction methods. Moreover, when the composition of a training sample is reasonable, the number of samples required for the SFONet training can be reduced.
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