Editorial Board Member
Shandong Normal University
| Jingjing Wang | |
|---|---|
| Researcher | Jingjing Wang |
| Affiliation | Shandong Normal University |
| Country | China |
| Scopus ID | 57214140268 |
| Documents | 79 |
| Citations | 726 |
| h-index | 15 |
| Subject Area | Neural Network |
| Event | Technology Scientists Awards |
| ORCID | 0000-0003-1597-1793 |
Jingjing Wang is affiliated with Shandong Normal University and has contributed extensively to the field of neural network research, computational imaging, inverse scattering systems, and advanced signal processing methodologies. Her academic profile demonstrates active participation in multidisciplinary research involving microwave imaging, image fusion, radar systems, and machine learning-assisted imaging technologies.[1] Her publication portfolio indexed in Scopus reflects sustained scholarly productivity, citation impact, and international visibility within engineering and intelligent imaging research domains.[2]
Abstract
This article presents an academic overview of Jingjing Wang, focusing on her scholarly contributions to neural network applications, microwave imaging, inverse scattering systems, MIMO-SAR imaging, and image fusion methodologies. Her research demonstrates interdisciplinary integration between computational intelligence and advanced imaging technologies for engineering applications.[2] The analysis highlights her publication impact, research collaborations, technical innovations, and suitability for recognition within the Technology Scientists Awards framework.[3]
Keywords
Neural Network, Microwave Imaging, Inverse Scattering, MIMO-SAR Imaging, Image Fusion, Computational Intelligence, Signal Processing, Deep Learning, Radar Imaging, Artificial Intelligence.[1]
Introduction
The rapid advancement of neural network methodologies has significantly influenced imaging science, signal reconstruction, and computational sensing technologies. Researchers working at the intersection of artificial intelligence and engineering systems have contributed to improving imaging precision, computational efficiency, and multi-source data interpretation.[2] Jingjing Wang’s research profile reflects active engagement in these evolving domains, particularly in inverse scattering imaging, radar imaging optimization, and intelligent image fusion approaches.[3]
Her work combines deep learning principles with advanced engineering models to address practical limitations in high-contrast imaging, nonlinear reconstruction, and multichannel signal integration. Such interdisciplinary contributions align with the broader objectives of modern intelligent sensing and computational imaging research.[1]
Research Profile
Jingjing Wang has established a consistent academic record supported by Scopus-indexed publications, citation impact, and collaborative international research activities.[1] Her research specialization primarily focuses on neural network systems, computational imaging, inverse scattering, radar imaging technologies, and image fusion techniques utilizing machine learning frameworks.[2]
- Advanced inverse scattering imaging systems
- Neural network-assisted image enhancement
- MIMO-SAR computational imaging methodologies
- Signal processing and nonlinear reconstruction
- Deep learning-based image fusion frameworks
Her scholarly output demonstrates integration of computational intelligence with practical imaging applications, supporting advancements in engineering visualization and sensing technologies.[3]
Research Contributions
One of Jingjing Wang’s notable research contributions involves the development of an enhanced contrast born iterative cascaded network for high-contrast inverse scattering imaging. This work explores advanced reconstruction strategies capable of improving imaging quality and computational efficiency in inverse scattering environments.[1]
Her research also includes efficient range migration algorithms integrated with chunked nonlinear normalized weights and SNR-based multichannel fusion methods for MIMO-SAR imaging systems. These approaches contribute to improved imaging robustness, enhanced signal integration, and optimization of radar imaging performance under complex conditions.[2]
In the field of image fusion, Jingjing Wang contributed to KCUNET, a framework that combines KAN and convolutional layers for multi-focus image fusion. This contribution reflects the increasing role of hybrid neural architectures in computational imaging and intelligent feature integration.[3]
Publications
- Enhanced Contrast Born Iterative Cascaded Network for High-Contrast Inverse Scattering Imaging.[1]
- An Efficient RMA with Chunked Nonlinear Normalized Weights and SNR-Based Multichannel Fusion for MIMO-SAR Imaging.[2]
- KCUNET: Multi-Focus Image Fusion via the Parallel Integration of KAN and Convolutional Layers.[3]
Research Impact
The research impact of Jingjing Wang is reflected through her Scopus-indexed publication profile, citation record, and ongoing contributions to computational imaging technologies.[1] Her interdisciplinary work supports broader developments in radar imaging, neural network optimization, image reconstruction, and intelligent sensing systems utilized across engineering and applied science disciplines.[2]
Her collaborations with multiple researchers in signal processing and imaging science further indicate active participation in contemporary scientific research networks. The combination of theoretical modeling and practical implementation in her publications contributes to both academic advancement and technological innovation.[3]
Award Suitability
Jingjing Wang demonstrates strong suitability for recognition within the Technology Scientists Awards due to her consistent scholarly productivity, research relevance, and contributions to neural network-enabled imaging technologies.[1] Her work addresses important technical challenges in inverse scattering systems, radar imaging optimization, and intelligent image fusion methodologies.[2]
The interdisciplinary nature of her research aligns with the objectives of technological innovation, computational intelligence advancement, and engineering-oriented scientific development. Her publication metrics and collaborative research activities further support her recognition as an active contributor within the scientific community.[3]
Conclusion
Jingjing Wang’s academic contributions illustrate the integration of neural networks, intelligent imaging systems, and computational sensing methodologies within modern engineering research.[1] Her work in inverse scattering imaging, MIMO-SAR systems, and image fusion demonstrates technical depth and interdisciplinary relevance.[2] Through scholarly publications, collaborative research, and impactful engineering studies, she continues to contribute to advancements in computational intelligence and imaging science.[3]
External Links
- ORCID Profile
- Scopus Author Profile
- DOI: Enhanced Contrast Born Iterative Cascaded Network for High-Contrast Inverse Scattering Imaging
- Technology Scientists Awards
References
- Wang, J., Li, Z., Xu, H., & Hu, N. (2025). Enhanced Contrast Born Iterative Cascaded Network for High-Contrast Inverse Scattering Imaging. IEEE Antennas and Wireless Propagation Letters.
DOI:https://doi.org/10.1109/LAWP.2025.3593269
- Wang, J., Chen, H., Duan, H., Sun, R., Yang, K., Fang, J., Xu, H., & Song, P. (2025). An Efficient RMA with Chunked Nonlinear Normalized Weights and SNR-Based Multichannel Fusion for MIMO-SAR Imaging. Remote Sensing, 17(18), 3232.
DOI:https://doi.org/10.3390/rs17183232
- Fang, J., Wang, R., Ning, X., Wang, R., Teng, S., Liu, X., Zhang, Z., Lu, W., Hu, S., & Wang, J. (2025). KCUNET: Multi-Focus Image Fusion via the Parallel Integration of KAN and Convolutional Layers. Entropy, 27(8), 785.
DOI:https://doi.org/10.3390/e27080785
- Elsevier. (n.d.). Scopus author details: Jingjing Wang, Author ID 57214140268. Scopus.
https://www.scopus.com/authid/detail.uri?authorId=57214140268
