Top 3 in FG 2021 Families In the Wild Kinship Verification Challenge
- URL: http://arxiv.org/abs/2110.07020v1
- Date: Wed, 13 Oct 2021 20:35:41 GMT
- Title: Top 3 in FG 2021 Families In the Wild Kinship Verification Challenge
- Authors: Junyi Huang, Maxwell Benjamin Strome, Ian Jenkins, Parker Williams, Bo
Feng, Yaning Wang, Roman Wang, Vaibhav Bagri, Newman Cheng, Iddo Drori
- Abstract summary: Kinship verification is important in social media applications, forensic investigations, finding missing children, and reuniting families.
We demonstrate high quality kinship verification by participating in the FG 2021 Recognizing Families in the Wild challenge.
Our approach is among the top 3 winning entries in the competition.
- Score: 2.502894813467962
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Kinship verification is the task of determining whether a parent-child,
sibling, or grandparent-grandchild relationship exists between two people and
is important in social media applications, forensic investigations, finding
missing children, and reuniting families. We demonstrate high quality kinship
verification by participating in the FG 2021 Recognizing Families in the Wild
challenge which provides the largest publicly available dataset in the field.
Our approach is among the top 3 winning entries in the competition. We ensemble
models written by both human experts and OpenAI Codex. We make our models and
code publicly available.
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