The patent badge is an abbreviated version of the USPTO patent document. The patent badge does contain a link to the full patent document.
The patent badge is an abbreviated version of the USPTO patent document. The patent badge covers the following: Patent number, Date patent was issued, Date patent was filed, Title of the patent, Applicant, Inventor, Assignee, Attorney firm, Primary examiner, Assistant examiner, CPCs, and Abstract. The patent badge does contain a link to the full patent document (in Adobe Acrobat format, aka pdf). To download or print any patent click here.
Patent No.:
Date of Patent:
Mar. 03, 2020
Filed:
Aug. 23, 2017
Uatc, Llc, San Francisco, CA (US);
Galen Clark Haynes, Pittsburgh, PA (US);
Ian Dewancker, Pittsburgh, PA (US);
Nemanja Djuric, Pittsburgh, PA (US);
Tzu-Kuo Huang, Pittsburgh, PA (US);
Tian Lan, Pittsburgh, PA (US);
Tsung-Han Lin, Pittsburgh, PA (US);
Micol Marchetti-Bowick, Pittsburgh, PA (US);
Vladan Radosavljevic, Pittsburgh, PA (US);
Jeff Schneider, Pittsburgh, PA (US);
Alexander David Styler, Pittsburgh, PA (US);
Neil Traft, Pittsburgh, PA (US);
Huahua Wang, Pittsburgh, PA (US);
Anthony Joseph Stentz, Pittsburgh, PA (US);
UATC, LLC, San Francisco, CA (US);
Abstract
The present disclosure provides systems and methods for predicting the future locations of objects that are perceived by autonomous vehicles. An autonomous vehicle can include a prediction system that, for each object perceived by the autonomous vehicle, generates one or more potential goals, selects one or more of the potential goals, and develops one or more trajectories by which the object can achieve the one or more selected goals. The prediction systems and methods described herein can include or leverage one or more machine-learned models that assist in predicting the future locations of the objects. As an example, in some implementations, the prediction system can include a machine-learned static object classifier, a machine-learned goal scoring model, a machine-learned trajectory development model, a machine-learned ballistic quality classifier, and/or other machine-learned models. The use of machine-learned models can improve the speed, quality, and/or accuracy of the generated predictions.