METHOD TO IMPROVE SCALE CONSISTENCY AND/OR SCALE AWARENESS IN A MODEL OF SELF-SUPERVISED DEPTH AND EGO-MOTION PREDICTION NEURAL NETWORKS

A method to improve scale consistency and/or scale awareness in a model of self-supervised depth and ego-motion prediction neural networks processing a video stream of monocular images, wherein complementary GPS coordinates synchronized with the images are used to calculate a GPS to scale loss to en...

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Hauptverfasser: VARMA, Arnav, ZONOOZ, Bahram, CHAWLA, Hemang, ARANI, Elahe
Format: Patent
Sprache:eng ; fre ; ger
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Zusammenfassung:A method to improve scale consistency and/or scale awareness in a model of self-supervised depth and ego-motion prediction neural networks processing a video stream of monocular images, wherein complementary GPS coordinates synchronized with the images are used to calculate a GPS to scale loss to enforce the scale-consistency and/or -awareness on the monocular self-supervised ego-motion and depth estimation. A relative weight assigned to the GPS to scale loss exponentially increases as training progresses. The depth and ego-motion prediction neural networks are trained using an appearance-based photometric loss between real and synthesized target images, as well as a smoothness loss on the depth predictions.