Towards interpretable face recognition / by Bangjie Yin.

Deep CNNs have been pushing the frontier of visual recognition over past years. Besides recognition accuracy, strong demands in understanding deep CNNs in the research community motivate developments of tools to dissect pre-trained models to visualize how they make predictions. Recent works further...

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Bibliographic Details
Main Author: Yin, Bangjie (Author)
Corporate Author: Michigan State University (Degree granting institution)
Other Authors: Liu, Xiaoming (Degree supervisor)
Language:English
Published: 2019.
Subjects:
Genre:
Online Access:
Dissertation Note:
Thesis M.S. Michigan State University. Computer Science 2019
Physical Description:1 online resource (ix, 38 pages) : illustrations
Format: Thesis Electronic eBook
Description
Summary:
Deep CNNs have been pushing the frontier of visual recognition over past years. Besides recognition accuracy, strong demands in understanding deep CNNs in the research community motivate developments of tools to dissect pre-trained models to visualize how they make predictions. Recent works further push the interpretability in the network learning stage to learn more meaningful representations. In this work, focusing on a specific area of visual recognition, we report our efforts towards interpretable face recognition. We propose a spatial activation diversity loss to learn more structured face representations. By leveraging the structure, we further design a feature activation diversity loss to push the interpretable representations to be discriminative and robust to occlusions. We demonstrate on three face recognition benchmarks that our proposed method is able to achieve the state-of-art face recognition accuracy with easily interpretable face representations.
Note:Electronic resource.
Call Number:MSU ONLINE THESIS
Bibliography Note:Includes bibliographical references (pages 34-38).
ISBN:9781392176238
1392176239
DOI:doi:10.25335/xrw6-xq49
Source of Description:
Description based on online resource; title from PDF title page (viewed on April 13, 2020)