DeepComp:一种改进面部年龄组估计的深度比较器

Ebenezer Nii Ayi Hammond, Shijie Zhou, Hongrong Cheng, Qihe Liu
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引用次数: 0

摘要

我们引入了一个被称为DeepComp的年龄组估计方案。它是早期信息共享特征聚合(EISFA)机制和三元分类器的结合。EISFA部分是一个特征提取器,它将一个连体层应用于输入图像和一个汇总所有图像的聚合模块。三进制过程将图像表示比较为三种可能的结果,分别是年轻、相似或更老。通过比较,我们得出一个分数,表示输入图像和参考图像之间的相似性:分数越高,相似度越近。实验表明,我们的DeepComp方案使用每个年龄组最少数量的参考图像,在受众基准数据集上实现了令人印象深刻的94.9%准确率。此外,我们在MORPH II数据集上展示了我们的方法的通用性,结果同样令人印象深刻。总之,我们表明,在其他方案中,我们的方法是面部年龄组估计的例证。
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DeepComp: A Deep Comparator for Improving Facial Age-Group Estimation
We introduce an age-group estimation scheme known as DeepComp. It is a combination of an Early Information-Sharing Feature Aggregation (EISFA) mechanism and a ternary classifier. The EISFA part is a feature extractor that applies a siamese layer to input images and an aggregation module that sums up all the images. The ternary process compares the image representations into three possible outcomes corresponding to younger, similar, or older. From the comparisons, we arrive at a score indicating the similarity between an input and reference images: the higher the score, the closer the similarity. Experimentation shows that our DeepComp scheme achieves an impressive 94.9% accuracy on the Adience benchmark dataset using a minimum number of reference images per age group. Moreover, we demonstrate the generality of our method on the MORPH II dataset, and the result is equally impressive. Altogether, we show that, among other schemes, our method exemplifies facial age-group estimation.
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