1 code implementation • 17 Dec 2024 • Yuqing Wang, Zhongling Huang, Shuxin Yang, Hao Tang, Xiaolan Qiu, Junwei Han, Dingwen Zhang
PolSAR data presents unique challenges due to its rich and complex characteristics.
no code implementations • 11 Mar 2024 • Mingyue Zhao, Han Li, Li Fan, Shiyuan Liu, Xiaolan Qiu, S. Kevin Zhou
Then, we construct a geometry-aware dual-path propagation framework (GDP) to further promote complementary propagation learning, composed of hard geometry-aware propagation learning and soft geometry-aware propagation guidance.
no code implementations • 2 Feb 2024 • Silin Gao, Wenlong Wang, Muhan Wang, Zhe Zhang, Zai Yang, Xiaolan Qiu, Bingchen Zhang, Yirong Wu
This paper presents an innovative gridless 3-D imaging framework tailored for UAV-borne TomoSAR.
no code implementations • 17 Jun 2023 • Fengming Hu, Feng Xu, Xiaolan Qiu, Chibiao Ding, YaQiu Jin
In this article, a new concept of Tandem Dual-Antenna SAR Interferometry (TDA-InSAR) system for single-pass reliable 3D surface mapping using the asymptotic 3D PU is proposed.
no code implementations • 13 May 2023 • Dandan Zhao, Zhe Zhang, Dongdong Lu, Jian Kang, Xiaolan Qiu, Yirong Wu
Although convolutional neural networks have been successfully employed for SAR image target recognition, surpassing traditional algorithms, most existing research concentrates on the amplitude domain and neglects the essential phase information.
no code implementations • 10 Apr 2023 • Guoru Zhou, Zhongqiu Xu, Yizhe Fan, Zhe Zhang, Xiaolan Qiu, Bingchen Zhang, Kun fu, Yirong Wu
High-resolution is a key trend in the development of synthetic aperture radar (SAR), which enables the capture of fine details and accurate representation of backscattering properties.
no code implementations • 20 Mar 2023 • Yuwei Wu, Zhe Zhang, Xiaolan Qiu, Yao Zhao, Weidong Yu
repetition frequency (PRF).
no code implementations • 16 Mar 2023 • Mingyue Zhao, Shang Zhao, Quan Quan, Li Fan, Xiaolan Qiu, Shiyuan Liu, S. Kevin Zhou
To address these problems, we contribute a new bronchial segmentation method based on Group Deep Dense Supervision (GDDS) that emphasizes fine-scale bronchioles segmentation in a simple-but-effective manner.
no code implementations • 30 Nov 2022 • Muhan Wang, Zhe Zhang, Xiaolan Qiu, Silin Gao, Yue Wang
In addition, adaptive threshold is introduced for each azimuth-range pixel, enabling the threshold shrinkage to be not only layer-varied but also element-wise.
no code implementations • 5 May 2022 • Muhan Wang, Zhe Zhang, Yue Wang, Silin Gao, Xiaolan Qiu
Synthetic aperture radar (SAR) tomography (TomoSAR) has attracted remarkable interest for its ability in achieving three-dimensional reconstruction along the elevation direction from multiple observations.
no code implementations • 16 Mar 2022 • Ruizhe Shi, Zhe Zhang, Xiaolan Qiu, Chibiao Ding
Numerical simulations and real data experiments show that the proposed GDLS algorithm outperforms the state-of-the-art methods e. g., CS and ANM, in terms of estimation performances.
1 code implementation • 15 Jun 2021 • Jiankun Chen, Xiaolan Qiu, Chibiao Ding, Yirong Wu
Based on the TensorFlow framework, a single layer supervised learning SNN is built from the bottom, and the classification accuracy reaches 90. 05\%.