Invention Grant
- Patent Title: 3D surface structure estimation using neural networks for autonomous systems and applications
-
Application No.: US17452751Application Date: 2021-10-28
-
Publication No.: US12039663B2Publication Date: 2024-07-16
- Inventor: Kang Wang , Yue Wu , Minwoo Park , Gang Pan
- Applicant: NVIDIA Corporation
- Applicant Address: US CA Santa Clara
- Assignee: NVIDIA Corporation
- Current Assignee: NVIDIA Corporation
- Current Assignee Address: US CA Santa Clara
- Agency: Shook, Hardy & Bacon L.L.P.
- Main IPC: G06T17/05
- IPC: G06T17/05 ; B60W30/09 ; B60W30/14 ; B60W40/06 ; B60W50/06 ; B60W60/00 ; G06F18/214 ; G06V20/05 ; G06V20/58

Abstract:
In various examples, to support training a deep neural network (DNN) to predict a dense representation of a 3D surface structure of interest, a training dataset is generated using a parametric mathematical modeling. A variety of synthetic 3D road surfaces may be generated by modeling a 3D road surface using varied parameters to simulate changes in road direction and lateral surface slope. In an example embodiment, a synthetic 3D road surface may be created by modeling a longitudinal 3D curve and expanding the longitudinal 3D curve to a 3D surface, and the resulting synthetic 3D surface may be sampled to form a synthetic ground truth projection image (e.g., a 2D height map). To generate corresponding input training data, a known pattern that represents which pixels may remain unobserved during 3D structure estimation may be generated and applied to a ground truth projection image to simulate a corresponding sparse projection image.
Public/Granted literature
- US11967022B2 3D surface structure estimation using neural networks for autonomous systems and applications Public/Granted day:2024-04-23
Information query