Facial Kinship Verification is the task of determining the degree of familial relationship between two facial images. It has recently gained a lot of interest in various applications spanning forensic science, social media, and demographic studies. In the past decade, deep learning-based approaches have emerged as a promising solution to this problem, achieving state-of-the-art performance. In this paper, we propose a novel method for solving kinship verification by using supervised contrastive learning, which trains the model to maximize the similarity between related individuals and minimize it between unrelated individuals. Our experiments show state-of-the-art results and achieve 81.1% accuracy in the Families in the Wild (FIW) dataset.
翻译:亲子关系核实是确定两种面部图像之间家庭关系程度的任务,最近对包括法医学、社交媒体和人口研究在内的各种应用产生了很大兴趣。过去十年,深层次的学习方法成为解决这一问题的有希望的解决办法,取得了最先进的表现。在本文中,我们提出一种新的方法,通过监督对比学习来解决亲子关系核实问题,这种学习培训模型,以最大限度地提高相关个人之间的相似性,并最大限度地减少非相关个人之间的相似性。我们的实验显示最新的结果,并在野生家庭数据集中实现了81.1%的准确性。