Real-time cross-spectral object association and depth estimation

作者: Murugan Sankaradas , Kunal Rao , Yi Yang , Biplob Debnath , Utsav Drolia

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摘要: A method for real-time cross-spectral object association and depth estimation is presented. The method includes synthesizing, by a cross-spectral generative adversarial network (CS-GAN), visual images from different data streams obtained from a plurality of different types of sensors, applying a feature-preserving loss function resulting in real-time pairing of corresponding cross-spectral objects, and applying dual bottleneck residual layers with skip connections to accelerate real-time inference and to accelerate convergence during model training.

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