Coupling Rendering And Generative Adversarial Networks For Artificial Sas Image Generation

OCEANS-IEEE(2019)

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摘要
There is a growing demand for large-scale Synthetic Aperture Sonar (SAS) datasets. This demand stems from data-driven applications such as Automatic Target Recognition (ATR) [1]-[3], segmentation [4] and oceanographic research of the seafloor, simulation for sensor prototype development and calibration [5], and even potential higher level tasks such as motion estimation [6] and micronavigation [7]. Unfortunately, the acquisition of SAS data is bottlenecked by the costly deployment of SAS imaging systems, and even when data acquisition is possible, the data is often skewed towards containing barren seafloor rather than objects of interest. This skew introduces a data imbalance problem wherein a dataset can have as much as a 1000-to-1 ratio of seafloor background to object-of-interest SAS image chips.
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关键词
oceanographic research,sensor prototype development,calibration,motion estimation,micronavigation,data acquisition,barren seafloor,data imbalance problem,seafloor background,object-of-interest SAS image chips,artificial SAS image generation,large-scale synthetic aperture sonar datasets,data-driven applications,automatic target recognition,ATR,coupling rendering,generative adversarial networks
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