软生物识别:给我你最喜欢的图像,我会告诉你的性别

Samiul Azam, M. Gavrilova
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引用次数: 12

摘要

出于安全和法医目的的性别估计不是一项微不足道的任务。最近,研究人员提出了基于面部图像、指纹脊密度、体型、声音和步态来预测性别的方法。迄今为止,还没有研究涉及使用一个人的图像审美偏好来预测性别。在认知和心理上,男性和女性具有不同的视觉审美偏好。本文证明了利用图像的感性审美特征来识别人的性别是可能的。本文识别了一组图像的美学特征,并使用过滤器和包裹选择方法选择了一些最具区别的特征。为了提高分类精度,将传统二元分类器得到的决策进行加权组合。最后的决策是基于混合分类器产生的概率的融合。该预测模型在一个由来自120个Flickr用户的24000张图片组成的数据库上进行了训练和测试。实验表明,适当的权重分配可以在仅基于美学的性别预测中获得77%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Soft biometric: Give me your favorite images and i will tell your gender
Gender estimation for security and forensic purposes is not a trivial task. Recently, researchers provided methods for predicting gender based on face-images, fingerprint ridge density, body shape, voice and gait. No research to date have been concerned with using one's image aesthetic preferences for predicting gender. Cognitively and psychologically, males and females have different visual aesthetic preferences. This paper is a proof of concept that it is possible to use image's perceptual aesthetic features to identify the gender of a person. This article identifies a bag of image aesthetic features and selects a number of most differentiating features using filter and wrapping selection methods. To improve the classification accuracy, weighted combination of decisions obtained by the conventional binary classifiers is used. The final decision is made based on the fusion of probabilities generated by the mixture of classifiers. The prediction model is trained and tested on a database consisting of 24000 images from 120 Flickr users. Experiment shows that a proper weight assignments allows to obtain 77% accuracy in gender prediction based on aesthetics alone.
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