2021
DOI: 10.1109/access.2021.3120202
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GenRadar: Self-Supervised Probabilistic Camera Synthesis Based on Radar Frequencies

Abstract: Autonomous systems require a continuous and dependable environment perception for navigation and decision-making, which is best achieved by combining different sensor types. Radar continues to function robustly in compromised circumstances in which cameras become impaired, guaranteeing a steady inflow of information. Yet, camera images provide a more intuitive and readily applicable impression of the world. This work combines the complementary strengths of both sensor types in a unique self-learning fusion app… Show more

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Cited by 3 publications
(1 citation statement)
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References 43 publications
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“…The decoder generates a radar intensity map in the polar grid conditioned on the encoded feature and random noise. Generative models can also be used in cross-modality data generation, for example GAN-based LiDAR-to-radar generation [104], GAN-based radar-to-image generation [105], and VAE-based radar-to-image generation [106].…”
Section: Synthetic Datamentioning
confidence: 99%
“…The decoder generates a radar intensity map in the polar grid conditioned on the encoded feature and random noise. Generative models can also be used in cross-modality data generation, for example GAN-based LiDAR-to-radar generation [104], GAN-based radar-to-image generation [105], and VAE-based radar-to-image generation [106].…”
Section: Synthetic Datamentioning
confidence: 99%