Monthly Archives: December 2021

Wireless Communication: Channel Protection using Random Modulation

  • December 27, 2021
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Modulation is prevalently used in signal processing and communications to, for example, effectively use available spectral bands by multiplexing signals in different frequency bands. Perhaps more closely related to our framework is code division multiple access, where also a binary waveform is pointwise multiplied with data&

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Simultaneous Blind Deconvolution and Phase Retrieval

  • December 27, 2021
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We consider the task of recovering two real or complex L-vectors from phaseless Fourier measurements of their circular convolution. Our method is a novel convex relaxation that is based on a lifted matrix recovery formulation that allows a non trivial convex relaxation of the of the bilinear measurements from convolution. We prove that if the two signals belong to known random subspaces of dimensions K and N, then they can be recovered up to the inherent&

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BranchHull: Bilinear Compressed Sensing

We consider the bilinear inverse problem of recovering two vectors, x and w,  RL from their entrywise product. For the case where the vectors have known signs and belong to known subspaces. An immediate formulation of the inverse problem leads to a non-convex optimization program. We use a geometrical insight to formulate a convex relaxation BranchHull, which is posed in the natural parameter space that does not require&

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Inverse Problems in Imaging under Pretrained Generative Prior

  • December 27, 2021
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Imaging inverse problems arise in a myriad of applications in signal processing, and computer vision. In particular, image dehazing, and deblurring is required in astronomy to recover sharp images from blurred, hazy, observed galaxy images; image retrieval and denoising from partial measurements for MRI or CT scan in medical imaging; image super resolution, and inpainting for human face recognition from blurred out, low resolution, and corrupted images&

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Blind Deconvolution using Convex Programming

  • December 23, 2021
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Blind deconvolution refers to recovering signals by observing only their convolution. Blind deconvolution is a fundamental problem in signal processing, wireless communication, and systems theory. This problem arises in the context of blind channel estimation in wireless communications, passive imaging: for example, to estimate earth layer prole for oil exploration, seismic interferometry, radar imaging, and many other applications&

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