Within- and cross- database evaluations for face gender classification via befit protocols

N. Erdogmus, Matthias Vanoni, S. Marcel
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引用次数: 9

Abstract

With its wide range of applicability, gender classification is an important task in face image analysis and it has drawn a great interest from the pattern recognition community. In this paper, we aim to deal with this problem using Local Binary Pattern Histogram Sequences as feature vectors in general. Differently from what has been done in similar studies, the algorithm parameters used in cropping and feature extraction steps are selected after an extensive grid search using BANCA and MOBIO databases. The final system which is evaluated on FERET, MORPH-II and LFW with gender balanced and imbalanced training sets is shown to achieve commensurate and better results compared to other state-of-the-art performances on those databases. The system is additionally tested for cross-database training in order to assess its accuracy in real world conditions. For LFW and MORPH-II, BeFIT protocols are used.
通过匹配协议进行面部性别分类的数据库内和数据库间评估
性别分类是人脸图像分析中的一项重要任务,具有广泛的适用性,引起了模式识别界的极大兴趣。在本文中,我们的目标是一般使用局部二值模式直方图序列作为特征向量来处理这个问题。与同类研究不同的是,裁剪和特征提取步骤中使用的算法参数是在使用BANCA和MOBIO数据库进行广泛的网格搜索后选择的。最终的系统在FERET、morphi - ii和LFW上进行了性别平衡和不平衡训练集的评估,结果表明,与这些数据库上的其他最先进的性能相比,该系统取得了相称的更好的结果。该系统还进行了跨数据库训练测试,以评估其在现实世界条件下的准确性。对于LFW和morphi - ii,使用BeFIT协议。
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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