Deep-learning based noise-resistant broadband signal recovery for fiber-connected radar networks

Author(s):  
Yuewen Zhou ◽  
Fangzheng Zhang ◽  
Guanqun Sun ◽  
Bindong Gao ◽  
Shilong Pan
2021 ◽  
Author(s):  
Yuewen Zhou ◽  
Fangzheng Zhang ◽  
Guanqun Sun ◽  
Shilong Pan

Geophysics ◽  
1998 ◽  
Vol 63 (2) ◽  
pp. 763-771 ◽  
Author(s):  
R. Daniel Wisecup

Aliasing is generally understood to mean that sampling causes those frequencies above the Nyquist frequency to be irretrievably “mixed” with those below. As a result, the perceived need to prevent signal aliasing has played a major role in limiting useable signal bandwidth. Yet, the evidence of aliasing in multichannel seismic data is often paradoxical and contradictory, suggesting that aliasing may be more apparent than real. A simple, exact sample‐mapping methodology, random‐sample‐interval imaging, can be used to overcome aliasing in many of the processes used currently for the imaging of seismic data. The robust process recovers broadband signal, on both synthetic and real data, with frequencies significantly above the Nyquist limit predicted by the 1-D sampling theorem. The method appears to be applicable whenever the signal trajectory is intersected irregularly by a sampling grid of two or more dimensions. The results suggest that both spatial and temporal aliasing of signal may be resolved simultaneously by this strategy.


2020 ◽  
Vol 2020 (28) ◽  
pp. 258-263
Author(s):  
Tarek Stiebel ◽  
Dorit Merhof

Spectral signal recovery from RGB-images based on modern deep learning techniques demonstrated promising results in recent years and offers a feasible alternative to costly or otherwise more complex spectral imaging devices. The state-of-the-art deep learning is formed by approaches that learn a direct end-toend mapping from RGB to spectral images from given RGB and spectral image pairs. Any prior knowledge, most importantly a known spectral responsivity of the imaging device, is not taken into account by the vast majority of deep learning based methods. Although attempts have been made to include prior knowledge with respect to the camera response functions, it remains unclear how to do so in a robust and constructive way. In this work, we propose a hybrid processing method utilizing a handcrafted linear map to directly obtain a good estimate on the spectral signal. Deep learning is only used for a subsequent signal refinement. In contrast to previous work, our linear estimate on the spectral signal is not subject to any network optimization and relies on explicit knowledge on the camera response. It is finally demonstrated that the proposed hybrid processing strategy reduces spectral reconstruction errors.


2021 ◽  
Vol 17 (12) ◽  
pp. e1009613
Author(s):  
Kaitlin E. Frasier

Machine learning algorithms, including recent advances in deep learning, are promising for tools for detection and classification of broadband high frequency signals in passive acoustic recordings. However, these methods are generally data-hungry and progress has been limited by challenges related to the lack of labeled datasets adequate for training and testing. Large quantities of known and as yet unidentified broadband signal types mingle in marine recordings, with variability introduced by acoustic propagation, source depths and orientations, and interacting signals. Manual classification of these datasets is unmanageable without an in-depth knowledge of the acoustic context of each recording location. A signal classification pipeline is presented which combines unsupervised and supervised learning phases with opportunities for expert oversight to label signals of interest. The method is illustrated with a case study using unsupervised clustering to identify five toothed whale echolocation click types and two anthropogenic signal categories. These categories are used to train a deep network to classify detected signals in either averaged time bins or as individual detections, in two independent datasets. Bin-level classification achieved higher overall precision (>99%) than click-level classification. However, click-level classification had the advantage of providing a label for every signal, and achieved higher overall recall, with overall precision from 92 to 94%. The results suggest that unsupervised learning is a viable solution for efficiently generating the large, representative training sets needed for applications of deep learning in passive acoustics.


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