Invention Application
- Patent Title: Learnable Cost Volume for Determining Pixel Correspondence
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Application No.: US17292647Application Date: 2020-07-08
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Publication No.: US20220189051A1Publication Date: 2022-06-16
- Inventor: Taihong Xiao , Deqing Sun , Ming-Hsuan Yang , Qifei Wang , Jinwei Yuan
- Applicant: Google LLC
- Applicant Address: US CA Mountain View
- Assignee: Google LLC
- Current Assignee: Google LLC
- Current Assignee Address: US CA Mountain View
- International Application: PCT/US2020/041258 WO 20200708
- Main IPC: G06T7/593
- IPC: G06T7/593 ; G06T7/215

Abstract:
A method includes obtaining a first plurality of feature vectors associated with a first image and a second plurality of feature vectors associated with a second image. The method also includes generating a plurality of transformed feature vectors by transforming each respective feature vector of the first plurality of feature vectors by a kernel matrix trained to define an elliptical inner product space. The method additionally includes generating a cost volume by determining, for each respective transformed feature vector of the plurality of transformed feature vectors, a plurality of inner products, wherein each respective inner product of the plurality of inner products is between the respective transformed feature vector and a corresponding candidate feature vector of a corresponding subset of the second plurality of feature vectors. The method further includes determining, based on the cost volume, a pixel correspondence between the first image and the second image.
Public/Granted literature
- US11790550B2 Learnable cost volume for determining pixel correspondence Public/Granted day:2023-10-17
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