Invention Grant
- Patent Title: Stereo depth estimation using deep neural networks
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Application No.: US16356439Application Date: 2019-03-18
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Publication No.: US11080590B2Publication Date: 2021-08-03
- Inventor: Nikolai Smolyanskiy , Alexey Kamenev , Stan Birchfield
- Applicant: NVIDIA Corporation
- Applicant Address: US CA San Jose
- Assignee: NVIDIA Corporation
- Current Assignee: NVIDIA Corporation
- Current Assignee Address: US CA San Jose
- Agency: Shook, Hardy & Bacon, L.L.P.
- Main IPC: G06N3/04
- IPC: G06N3/04 ; G06N3/08 ; G06N3/10 ; G01S17/00 ; G06T7/00 ; G06T7/593 ; G06T1/20 ; G06K9/62 ; G06N3/063 ; G01S17/86 ; G01S17/89

Abstract:
Various examples of the present disclosure include a stereoscopic deep neural network (DNN) that produces accurate and reliable results in real-time. Both LIDAR data (supervised training) and photometric error (unsupervised training) may be used to train the DNN in a semi-supervised manner. The stereoscopic DNN may use an exponential linear unit (ELU) activation function to increase processing speeds, as well as a machine learned argmax function that may include a plurality of convolutional layers having trainable parameters to account for context. The stereoscopic DNN may further include layers having an encoder/decoder architecture, where the encoder portion of the layers may include a combination of three-dimensional convolutional layers followed by two-dimensional convolutional layers.
Public/Granted literature
- US20190295282A1 STEREO DEPTH ESTIMATION USING DEEP NEURAL NETWORKS Public/Granted day:2019-09-26
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