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Gender Classification by Deep Learning on Millions of Weakly Labelled Images

机译:深度学习数百万弱标记图像的性别分类

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When analysing human activities using data mining or machine learning techniques, it can be useful to infer properties such as the gender or age of the people involved. This paper focuses on the sub-problem of gender recognition, which has been studied extensively in the literature, with two main problems remaining unsolved: how to improve the accuracy on real-world face images, and how to generalise the models to perform well on new datasets. We address these problems by collecting five million weakly labelled face images, and performing three different experiments, investigating: the performance difference between convolutional neural networks (CNNs) of differing depths and a support vector machine approach using local binary pattern features on the same training data; the effect of contextual information on classification accuracy; and the ability of convolutional neural networks and large amounts of training data to generalise to cross-database classification. We report record-breaking results on both the Labeled Faces in the Wild (LFW) dataset, achieving an accuracy of 98.90%, and the Images of Groups (GROUPS) dataset, achieving an accuracy of 91.34% for cross-database gender classification.
机译:在使用数据挖掘或机器学习技术分析人类活动时,可以对所涉及的人民的性别或年龄如性别或年龄进行推断。本文重点介绍了性别识别的子问题,这已经在文献中进行了广泛研究,其中两个主要问题仍未解决:如何提高现实世界脸部图像的准确性,以及如何概括模型以表现良好的模型新数据集。我们通过收集五百万弱标记的面部图像来解决这些问题,并进行三种不同的实验,调查:不同深度的卷积神经网络(CNNS)与同一训练数据上的局部二进制图案特征之间的卷积神经网络(CNNS)之间的性能差异;背景信息对分类准确性的影响;以及卷积神经网络和大量训练数据的能力概括为跨数据库分类。我们在野外(LFW)数据集中的标记面上报告了记录 - 断裂结果,实现了98.90%的准确性,以及组(组)数据集的图像(组)数据集,用于跨数据库性别分类的准确性为91.34%。

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