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Understanding and Comparing Deep Neural Networks for Age and Gender Classification

机译:了解和比较用于年龄和性别分类的深度神经网络

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Recently, deep neural networks have demonstrated excellent performances in recognizing the age and gender on human face images. However, these models were applied in a black-box manner with no information provided about which facial features are actually used for prediction and how these features depend on image preprocessing, model initialization and architecture choice. We present a study investigating these different effects. In detail, our work compares four popular neural network architectures, studies the effect of pretraining, evaluates the robustness of the considered alignment preprocessings via cross-method test set swapping and intuitively visualizes the model's prediction strategies in given preprocessing conditions using the recent Layer-wise Relevance Propagation (LRP) algorithm. Our evaluations on the challenging Adience benchmark show that suitable parameter initialization leads to a holistic perception of the input, compensating artefactual data representations. With a combination of simple preprocessing steps, we reach state of the art performance in gender recognition.
机译:最近,深度神经网络在识别人脸图像上的年龄和性别方面表现出出色的性能。但是,这些模型以黑盒方式应用,没有提供有关实际使用哪些面部特征进行预测以及这些特征如何依赖于图像预处理,模型初始化和体系结构选择的信息。我们提出一项研究这些不同影响的研究。详细地说,我们的工作比较了四种流行的神经网络架构,研究了预训练的效果,通过跨方法测试集交换评估了考虑的对准预处理的鲁棒性,并使用最新的Layer-wise直观地可视化了模型在给定预处理条件下的预测策略相关性传播(LRP)算法。我们对具有挑战性的“基准”基准的评估表明,适当的参数初始化可导致对输入的整体感知,从而补偿了人工数据表示。通过简单的预处理步骤的组合,我们在性别识别方面达到了最先进的性能。

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