Publisher Copyright: IEEEWe present imaging results with dual-band millimeter- and submillimeter-wave hologram and deep neural networks (NNs). The imaging method uses a single transceiver, which interrogates the region of interest (RoI) through a dispersive transmission-type hologram. The hologram was designed to cover two bands 50-75 and 220-330 GHz. Two separate single-transceiver imaging experiments were carried out with two test objects translated in the RoI at 101 x 101 locations. NNs were trained to images of the test objects with wideband reflection spectra from the RoI as the input. The deep NNs were based on deconvolutional (DC) layers that mapped the latent information of the test objects in the spectra to image pixel values. The ...
A very popular technique of 3D vision now-a-days is holography which has many advantages over the st...
The dense interconnections that characterize neural networks are most readily implemented using opti...
The dense interconnections that characterize neural networks are most readily implemented using opti...
We present recent developments of a standoff imaging system based on a frequency-diverse phase holog...
Publisher Copyright: AuthorWe present design, simulation, and experimental characterization of dual-...
The challenge of current millimeter-wave and submillimeter-wave imaging systems is the scalability o...
The use of networking signals has been extended beyond communication to sensing, localization, robot...
The use of networking signals has been extended beyond communication to sensing, localization, robot...
This paper studies the feasibility of a hologram-based compact antenna test range (CATR) for submill...
This paper studies the feasibility of a hologram-based compact antenna test range (CATR) for submill...
We perform the principal verification of reconstructing object surface images by using deep learning...
Traditional security check technology is mainly based on metal detection by manual inspection. This ...
The dense interconnections that characterize neural networks are most readily implemented using opti...
Deep neural networks are increasingly applied in many branches of applied science such as computer v...
Computer-generated holograms (diffractive elements) can be used for shaping millimeter-wave beams, e...
A very popular technique of 3D vision now-a-days is holography which has many advantages over the st...
The dense interconnections that characterize neural networks are most readily implemented using opti...
The dense interconnections that characterize neural networks are most readily implemented using opti...
We present recent developments of a standoff imaging system based on a frequency-diverse phase holog...
Publisher Copyright: AuthorWe present design, simulation, and experimental characterization of dual-...
The challenge of current millimeter-wave and submillimeter-wave imaging systems is the scalability o...
The use of networking signals has been extended beyond communication to sensing, localization, robot...
The use of networking signals has been extended beyond communication to sensing, localization, robot...
This paper studies the feasibility of a hologram-based compact antenna test range (CATR) for submill...
This paper studies the feasibility of a hologram-based compact antenna test range (CATR) for submill...
We perform the principal verification of reconstructing object surface images by using deep learning...
Traditional security check technology is mainly based on metal detection by manual inspection. This ...
The dense interconnections that characterize neural networks are most readily implemented using opti...
Deep neural networks are increasingly applied in many branches of applied science such as computer v...
Computer-generated holograms (diffractive elements) can be used for shaping millimeter-wave beams, e...
A very popular technique of 3D vision now-a-days is holography which has many advantages over the st...
The dense interconnections that characterize neural networks are most readily implemented using opti...
The dense interconnections that characterize neural networks are most readily implemented using opti...