Fuzzy similarity-based classification method for gender recognition using 3D facial images

Soufiane Ezghari, Naouar Belghini, Azeddine Zahi, A. Zarghili
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引用次数: 2

Abstract

In this paper, we propose a new fuzzy similarity-based classification (FSBC) method for the task of gender recognition. The proposed method characterises each individual by extracting geometrical features from a 3D facial image using pertinent radial curves. Our approach includes representing the extracted features using fuzzy sets to handle imprecision in its values. Also, the proposed FSBC method recognises the gender of a new person by evaluating his similarity to the male and female samples pre-set as gender representatives set, then we aggregate the obtained similarities to compute the scores of belonging to each gender. In the end, we ascribe to each new person the gender with the higher score. With the proposed method, two main advantages are obtained: First, we used the OWA operator and RIM quantifier to define the percentage of significant features for the similarity assessment. Second, the aggregation process was performed using compensatory operators to ensure the selected gender has high similarities. Experiments were conducted using FRAV3D database, by considering only one frontal pose in the gender representatives set. The obtained gender recognition rate of the proposed method was very promising compared to other classification method.
基于模糊相似度的三维人脸图像性别识别方法
本文提出了一种新的基于模糊相似度的性别识别方法。该方法通过使用相关的径向曲线从三维面部图像中提取几何特征来表征每个个体。我们的方法包括使用模糊集来表示提取的特征,以处理其值的不精确性。此外,本文提出的FSBC方法通过评估新人与预先设置为性别代表集的男性和女性样本的相似度来识别新人的性别,然后将获得的相似度进行汇总,计算属于每个性别的分数。最后,我们将得分较高的性别归给每个新人。采用该方法,获得了两个主要优点:首先,我们使用OWA算子和RIM量化词来定义用于相似性评估的重要特征的百分比;其次,利用补偿算子进行聚合,确保所选性别具有较高的相似性。实验使用FRAV3D数据库,在性别代表集中只考虑一个正面姿势。与其他分类方法相比,该方法的性别识别率有很大提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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