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An Invitation to Hypercomplex Phase Retrieval: Theory and applications

Román Jácome, Kumar Vijay Mishra, Brian M. Sadler, Henry Argüello

2024IEEE Signal Processing Magazine12 citationsDOI

Abstract

Hypercomplex signal processing (HSP) provides state-of-the-art tools to handle multidimensional signals by harnessing the intrinsic correlation of the signal dimensions through Clifford algebra. Recently, the hypercomplex representation of the phase retrieval (PR) problem, wherein a complex-valued signal is estimated through its intensity-only projections, has attracted significant interest. The hypercomplex PR (HPR) arises in many optical imaging and computational sensing applications that usually comprise quaternion- and octonion-valued signals. Analogous to the traditional PR, measurements in HPR may involve complex, hypercomplex, Fourier, and other sensing matrices. This set of problems opens opportunities for developing novel HSP tools and algorithms. This article provides a synopsis of the emerging areas and applications of HPR with a focus on optical imaging.

Topics & Concepts

Hypercomplex numberSignal processingComputer scienceImage processingPhase (matter)Image (mathematics)Artificial intelligenceMathematicsQuaternionDigital signal processingPhysicsComputer hardwareQuantum mechanicsGeometryAdvanced X-ray Imaging TechniquesAdvanced Electron Microscopy Techniques and ApplicationsSeismic Imaging and Inversion Techniques
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