Graph Attention Network Based Single-Pixel Compressive Direction of
Arrival Estimation
- URL: http://arxiv.org/abs/2109.05466v1
- Date: Sun, 12 Sep 2021 09:19:49 GMT
- Title: Graph Attention Network Based Single-Pixel Compressive Direction of
Arrival Estimation
- Authors: K\"ur\c{s}at Tekb{\i}y{\i}k, Okan Yurduseven, G\"une\c{s} Karabulut
Kurt
- Abstract summary: We present a single-pixel compressive direction of arrival (DoA) estimation technique leveraging a graph attention network (GAT) based deep-learning framework.
We show that the presented GAT integrated single-pixel radar framework can retrieve high fidelity DoA information even relatively low signal-to-noise (SNR) levels.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: In this paper, we present a single-pixel compressive direction of arrival
(DoA) estimation technique leveraging a graph attention network (GAT) based
deep-learning framework. The physical layer compression is achieved using a
coded-aperture technique, probing the spectrum of far-field sources incident on
the aperture using a set of spatio-temporally incoherent modes. This
information is then encoded and compressed into the channel of the
coded-aperture. The coded-aperture based receiver exhibits a single-channel,
replacing the conventional multichannel raster scan based solutions for DoA
estimation. The GAT network enables the compressive DoA estimation framework to
learn the DoA information directly from the measurements acquired using the
coded-aperture. This step eliminates the need for an additional reconstruction
step and significantly simplifies the processing layer to obtain the DoA
estimate. We show that the presented GAT integrated single-pixel radar
framework can retrieve high fidelity DoA information even under relatively low
signal-to-noise ratio (SNR) levels.
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