Invention Application
- Patent Title: WEAKLY SUPERVISED IMAGE SEMANTIC SEGMENTATION METHOD, SYSTEM AND APPARATUS BASED ON INTRA-CLASS DISCRIMINATOR
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Application No.: US17442697Application Date: 2020-07-02
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Publication No.: US20220180622A1Publication Date: 2022-06-09
- Inventor: Zhaoxiang ZHANG , Tieniu TAN , Chunfeng SONG , Junsong FAN
- Applicant: INSTITUTE OF AUTOMATION, CHINESE ACADEMY OF SCIENCES
- Applicant Address: CN Beijing
- Assignee: INSTITUTE OF AUTOMATION, CHINESE ACADEMY OF SCIENCES
- Current Assignee: INSTITUTE OF AUTOMATION, CHINESE ACADEMY OF SCIENCES
- Current Assignee Address: CN Beijing
- Priority: CN202010506805.9 20200605
- International Application: PCT/CN2020/099945 WO 20200702
- Main IPC: G06V10/764
- IPC: G06V10/764 ; G06T7/174 ; G06V10/774 ; G06V10/776 ; G06V20/70 ; G06V10/40

Abstract:
A weakly supervised image semantic segmentation method based on an intra-class discriminator includes: constructing two levels of intra-class discriminators for each image-level class to determine whether pixels belonging to the image class belong to a target foreground or a background, and using weakly supervised data for training; generating a pixel-level image class label based on the two levels of intra-class discriminators, and generating and outputting a semantic segmentation result; and further training an image semantic segmentation module or network by using the label to obtain a final semantic segmentation model for an unlabeled input image. By means of the new method, intra-class image information implied in a feature code is fully mined, foreground and background pixels are accurately distinguished, and performance of a weakly supervised semantic segmentation model is significantly improved under the condition of only relying on an image-level annotation.
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