Using Black-box Compression Algorithms for Phase Retrieval
Milad Bakhshizadeh, Arian Maleki, Shirin Jalali

TL;DR
This paper introduces a novel compression-based approach for phase retrieval that leverages black-box compression codes, providing theoretical guarantees and demonstrating effectiveness on real-world images.
Contribution
It develops COPER, a new compression-based phase retrieval framework, and proposes GD-COPER, an efficient algorithm with proven accuracy under certain measurement conditions.
Findings
COPER links measurement requirements to the alpha-dimension of compression codes.
GD-COPER achieves accurate recovery with measurements proportional to the square of the alpha-dimension.
JPEG2000 integration demonstrates practical effectiveness on real-world images.
Abstract
Compressive phase retrieval refers to the problem of recovering a structured -dimensional complex-valued vector from its phase-less under-determined linear measurements. The non-linearity of measurements makes designing theoretically-analyzable efficient phase retrieval algorithms challenging. As a result, to a great extent, algorithms designed in this area are developed to take advantage of simple structures such as sparsity and its convex generalizations. The goal of this paper is to move beyond simple models through employing compression codes. Such codes are typically developed to take advantage of complex signal models to represent the signals as efficiently as possible. In this work, it is shown how an existing compression code can be treated as a black box and integrated into an efficient solution for phase retrieval. First, COmpressive PhasE Retrieval (COPER) optimization, a…
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