亲属关系
相似性(几何)
联想(心理学)
计算机科学
人工智能
生物医学
可预测性
模式识别(心理学)
进化生物学
心理学
生物
图像(数学)
遗传学
数学
人类学
社会学
心理治疗师
统计
作者
Jie Yu,Xu Jin,Du Wang,Yuanchao Bai,Xin Zhou,M. Gao,Shuwen Li,Jiarui Qin,X Chen,Kun Wang,Jiawen Yu,Chen Chen,Qiheng Xie,Sumei Xie,Xiaochao Kong,Wenxuan Zhan,Yizhen Yu,Kai Li,Qiang Ji,Feng Chen,Peng Chen
标识
DOI:10.1002/elps.202300169
摘要
Abstract Facial image–based kinship verification represents a burgeoning frontier within the realms of computer vision and biomedicine. Recent genome‐wide association studies have underscored the heritability of human facial morphology, revealing its predictability based on genetic information. These revelations form a robust foundation for advancing facial image–based kinship verification. Despite strides in computer vision, there remains a discernible gap between the biomedical and computer vision domains. Notably, the absence of family photo datasets established through biological paternity testing methods poses a significant challenge. This study addresses this gap by introducing the biological kinship visualization dataset, encompassing 5773 individuals from 2412 families with biologically confirmed kinship. Our analysis delves into the distribution and influencing factors of facial similarity among parent–child pairs, probing the potential association between forensic short tandem repeat polymorphisms and facial similarity. Additionally, we have developed a machine learning model for facial image–based kinship verification, achieving an accuracy of 0.80 in the dataset. To facilitate further exploration, we have established an online tool and database, accessible at http://120.55.161.230:88/ .
科研通智能强力驱动
Strongly Powered by AbleSci AI