事件和帧合成孔径成像

Wei Liao, Xiang Zhang, Lei Yu, Shijie Lin, Wentao Yang, Ning Qiao
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引用次数: 5

摘要

基于事件的合成孔径成像(E-SAI)最近被提出用于透视极其密集的遮挡物。然而,在稀疏遮挡下,由于信号事件的急剧减少,E-SAI的性能并不一致。本文通过利用事件和帧的优点来解决这个问题,导致基于融合的SAl (EF-SAI)在不同密度的遮挡下表现一致。特别是,我们首先通过多模态特征编码器从事件和帧中提取特征,然后应用多阶段融合网络进行跨模态增强和密度感知特征选择。最后,使用CNN解码器从选定的特征生成无遮挡的视觉图像。大量的实验表明,我们的方法有效地处理了不同密度的咬合,并取得了比最先进的人工智能方法更好的性能。代码和数据集可在https://github.com/smjsc/EF-SAI上获得
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Synthetic Aperture Imaging with Events and Frames
The Event-based Synthetic Aperture Imaging (E-SAI) has recently been proposed to see through extremely dense occlusions. However, the performance of E-SAI is not consistent under sparse occlusions due to the dramatic de-crease of signal events. This paper addresses this problem by leveraging the merits of both events and frames, leading to a fusion-based SAl (EF-SAI) that performs consistently under the different densities of occlusions. In particular, we first extract the feature from events and frames via multi-modal feature encoders and then apply a multi-stage fusion network for cross-modal enhancement and density-aware feature selection. Finally, a CNN decoder is employed to generate occlusion-free visual images from selected features. Extensive experiments show that our method effectively tackles varying densities of occlusions and achieves superior performance to the state-of-the-art SAl methods. Codes and datasets are available at https://github.com/smjsc/EF-SAI
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