Invention Grant
- Patent Title: Coupled multi-task fully convolutional networks using multi-scale contextual information and hierarchical hyper-features for semantic image segmentation
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Application No.: US17124064Application Date: 2020-12-16
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Publication No.: US11538164B2Publication Date: 2022-12-27
- Inventor: Libin Wang , Anbang Yao , Yurong Chen
- Applicant: Intel Corporation
- Applicant Address: US CA Santa Clara
- Assignee: Intel Corporation
- Current Assignee: Intel Corporation
- Current Assignee Address: US CA Santa Clara
- Agency: Essential Patents Group, LLP.
- Main IPC: G06V10/00
- IPC: G06V10/00 ; G06T7/10 ; G06N3/04 ; G06N3/08 ; G06T7/11 ; G06T7/143 ; G06V10/26 ; G06V10/94 ; G06V10/44 ; G06F16/55 ; G06N5/04

Abstract:
Techniques related to implementing fully convolutional networks for semantic image segmentation are discussed. Such techniques may include combining feature maps from multiple stages of a multi-stage fully convolutional network to generate a hyper-feature corresponding to an input image, up-sampling the hyper-feature and summing it with a feature map of a previous stage to provide a final set of features, and classifying the final set of features to provide semantic image segmentation of the input image.
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