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US Patent 11704890 Distance to obstacle detection in autonomous machine applications

Patent 11704890 was granted and assigned to NVIDIA on July, 2023 by the United States Patent and Trademark Office.

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Contents

Is a
Patent
Patent
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Patent attributes

Patent Applicant
NVIDIA
NVIDIA
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Current Assignee
NVIDIA
NVIDIA
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Patent Jurisdiction
United States Patent and Trademark Office
United States Patent and Trademark Office
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Patent Number
117048900
Date of Patent
July 18, 2023
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Patent Application Number
175226240
Date Filed
November 9, 2021
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Patent Citations
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US Patent 9742869 Approach to adaptive allocation of shared resources in computer systems
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US Patent 7409295 Imminent-collision detection system and process
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US Patent 8204542 Methods for processing apparatus originated communication request and communication apparatuses utilizing the same
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US Patent 9373057 Training a neural network to detect objects in images
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US Patent 9701307 Systems and methods for hazard mitigation
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US Patent 9710714 Fusion of RGB images and LiDAR data for lane classification
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US Patent 10380886 Connected automated vehicle highway systems and methods
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US Patent 10489972 Realistic 3D virtual world creation and simulation for training automated driving systems
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Patent Citations Received
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US Patent 11790230 Distance to obstacle detection in autonomous machine applications
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US Patent 12093824 Distance to obstacle detection in autonomous machine applications
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US Patent 12073325 Distance estimation to objects and free-space boundaries in autonomous machine applications
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Patent Primary Examiner
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Shervin K Nakhjavan
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CPC Code
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G06T 7/536
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G06V 20/58
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G06V 10/25
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G06V 10/454
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G06V 10/70
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G06T 2207/30261
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G06V 10/82
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G06T 2207/20084
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In various examples, a deep neural network (DNN) is trained—using image data alone—to accurately predict distances to objects, obstacles, and/or a detected free-space boundary. The DNN may be trained with ground truth data that is generated using sensor data representative of motion of an ego-vehicle and/or sensor data from any number of depth predicting sensors—such as, without limitation, RADAR sensors, LIDAR sensors, and/or SONAR sensors. The DNN may be trained using two or more loss functions each corresponding to a particular portion of the environment that depth is predicted for, such that—in deployment—more accurate depth estimates for objects, obstacles, and/or the detected free-space boundary are computed by the DNN. In some embodiments, a sampling algorithm may be used to sample depth values corresponding to an input resolution of the DNN from a predicted depth map of the DNN at an output resolution of the DNN.

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