In recent years, radio frequency (RF) sensing has gained increasing popularity due to its pervasiveness, low cost, non-intrusiveness, and privacy preservation. However, realizing the promises of RF sensing is highly nontrivial, given typical challenges such as multipath and interference. One potential solution leverages deep learning to build direct mappings from the RF domain to target domains, hence avoiding complex RF physical modeling. While earlier solutions exploit only simple feature extraction and classification modules, an emerging trend adds functional layers on top of elementary modules for more powerful generalizability and flexible applicability. To better understand this potential, this article takes a layered approach to summarize RF sensing enabled by deep learning. Essentially, we present a four-layer framework: physical, backbone, generalization, and application. While this layered framework provides readers a systematic methodology for designing deep interpreted RF sensing, it also facilitates making improvement proposals and hints at future research opportunities.
翻译:近年来,无线电频率(RF)遥感因其普及性、低成本、非侵扰性和隐私保护而越来越受欢迎。然而,鉴于多路和干扰等典型挑战,实现RF遥感的许诺是高度非技术性的。一个潜在解决办法利用深层次的学习,从RF领域到目标领域建立直接绘图,从而避免复杂的RF物理建模。虽然早期解决办法仅利用简单的地物提取和分类模块,但新出现的趋势在初级模块之上增加了功能层面,以便更具影响力的通用性和灵活适用性。为更好地了解这一潜力,本条以分层方式总结通过深层次学习获得的RF遥感。基本上,我们提出了一个四层框架:物理、骨干、一般化和应用。虽然这个分层框架为读者提供了设计深入解释RF遥感的系统方法,但也为在未来的研究机会提出改进建议和提示提供了便利。