基于CNN模型投票的性别预测

Kyoungson Jhang
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引用次数: 4

摘要

随着CNN架构的发展,性别预测的准确性也在提高。本文提出了投票方案,利用已有的CNN模型进一步提高性别预测精度。多数投票通常需要奇数模型,而基于softmax的投票可以利用任意数量的模型来提高准确性。实验表明,CNN模型的投票使性别预测精度进一步提高,基于softmax的选民在使用相同的CNN模型的情况下,其性别预测精度始终优于多数选民。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gender Prediction Based on Voting of CNN Models
Gender prediction accuracy increases as CNN architecture evolves. This paper proposes voting schemes to utilize the already developed CNN models to further improve gender prediction accuracy. Majority voting usually requires odd numbered models while proposed softmax based voting can utilize any number of models to improve accuracy. With experiments, it is shown that the voting of CNN models leads to further improvement of gender prediction accuracy and that softmax-based voters always show better gender prediction accuracy than majority voters though they consist of the same CNN models.
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