ELEDIA E-AIR 2024年11月26日
IEEE T-AP Special Issue on “Artificial Intelligence: New Frontiers in Real‐Time Inverse Scattering and Electromagnetic Imaging”
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IEEE Transactions on Antennas and Propagation即将发布一篇关于人工智能在实时逆散射和电磁成像领域新应用的专刊。文章指出,深度学习技术在解决复杂电磁逆散射和成像问题方面展现出巨大的潜力,能够实现快速、准确的像素级重建。结合大数据和快速优化算法,深度学习有望在生物医学成像、文物检测、工业无损检测等领域发挥重要作用。专刊旨在探讨人工智能和深度学习在电磁逆散射和成像领域的最新进展,促进该交叉学科领域的发展,推动更先进的成像技术应用。

💡 **深度学习在电磁逆散射和成像中的应用潜力巨大:**深度学习技术结合大数据和快速优化算法,能够有效解决复杂电磁逆散射和成像问题,并实现快速、准确的像素级重建,为生物医学成像、文物检测、工业无损检测等领域带来新的机遇。

📡 **深度学习有望提高电磁成像的效率和可靠性:**利用深度学习“学习”大量物理数据,并“掌握”特定边界条件下的物理规律,可以开发出更先进的逆散射和电磁成像技术,提高精度、鲁棒性和计算效率。

🗓️ **专刊征稿时间:** 2021年3月31日截止投稿,2021年8月31日公布最终决定,2021年11月30日发表。

🧑‍🏫 **专刊客座编辑:**Manuel Arrebolar, Maokun Li, Marco Salucci。

🌍 **应用领域广泛:**深度学习驱动的电磁成像技术在生物医学成像、文物考古、工业无损检测、穿墙成像和地下成像等领域具有广泛的应用前景。

The IEEE Transactions on Antennas and Propagation has just announced an upcoming Special issue to appear in November 2021 on Artificial Intelligence: New Frontiers in Real‐Time Inverse Scattering and Electromagnetic Imaging which will be guest edited by Manuel ARREBOLA, Maokun LI, Marco SALUCCI. Please find below additional information and important dates and visit the dedicated web page for submission procedures.

Guest Editors

Manuel ARREBOLA, Universidad de Oviedo, Spain (arrebola@uniovi.es)
Maokun LI, Tsinghua University (maokunli@tsinghua.edu.cn)
Marco SALUCCI, University of Trento (marco.salucci@unitn.it)

Outline

Understanding and solving complex problems in the physical world has been an intelligent endeavor of humankind. Moreover, the study of artificial intelligence embodies the dream of designing machines like humans. Research in deep learning (DL) techniques has attracted much attention in many application areas. With the help of big data technology, massive parallel computing, and fast optimization algorithms, DL has greatly improved the performance of many problems in the speech and image research, power transportation networks or bio‐electromagnetics, among others. Nowadays, DL is rapidly emerging in the antennas and propagation community as an extremely powerful paradigm for solving high‐complexity electromagnetic inverse scattering (IS) and imaging problems with unprecedented computational efficiency without reducing the accuracy and therefore reliability. As a matter of fact, DL is a promising solution to achieve accurate pixel‐wise reconstructions with real‐time estimation performance, a desirable feature in many applications such as biomedical imaging, works of art and archaeological inspection, industrial non destructive testing and evaluation, trough‐the‐wall imaging, and subsurface imaging. With the spreading of DL techniques, improvement in learning capacity may allow machines to “learn” from a large amount of physical data and “master” the physical laws in certain controlled boundary conditions. In the long run, a hybridization of fundamental physical principles with “knowledge” from big data could unleash numerous engineering applications that used to be impossible due to the limit of data information and ability of computation. As a result, more advanced IS and electromagnetic imaging techniques can be developed with improved accuracy, robustness, and computational efficiency. The objective of this Special Issue is to report recent advancements in theory and applications of artificial intelligence and DL to solve electromagnetic IS and imaging problems within the research scope of Antennas and Propagation with extremely fast but reliable techniques. With this Special Issue, we hope to bring more attention and research efforts in our society to this emerging multi‐disciplinary field, resulting in an evolution of the state of the art.

Important Dates

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相关标签

人工智能 电磁成像 深度学习 逆散射 电磁逆问题
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