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Pose-Aware Face Recognition in the Wild

机译:在野外识别姿势的人脸

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摘要

We propose a method to push the frontiers of unconstrained face recognition in the wild, focusing on the problem of extreme pose variations. As opposed to current techniques which either expect a single model to learn pose invariance through massive amounts of training data, or which normalize images to a single frontal pose, our method explicitly tackles pose variation by using multiple pose specific models and rendered face images. We leverage deep Convolutional Neural Networks (CNNs) to learn discriminative representations we call Pose-Aware Models (PAMs) using 500K images from the CASIA WebFace dataset. We present a comparative evaluation on the new IARPA Janus Benchmark A (IJB-A) and PIPA datasets. On these datasets PAMs achieve remarkably better performance than commercial products and surprisingly also outperform methods that are specifically fine-tuned on the target dataset.
机译:我们提出了一种在野外推动无约束人脸识别领域的方法,重点是极端姿势变化的问题。与当前的技术相反,该技术要么期望单个模型通过大量的训练数据来学习姿势不变性,要么将图像规范化为单个额叶姿势,而我们的方法则通过使用多个特定于姿势的模型和渲染的人脸图像来显式解决姿势变化。我们利用深度卷积神经网络(CNN)来学习使用CASIA WebFace数据集中的500K图像进行的识别性表示,我们将其称为姿态感知模型(PAM)。我们对新的IARPA Janus Benchmark A(IJB-A)和PIPA数据集进行比较评估。在这些数据集上,PAM的性能明显优于商业产品,并且令人惊讶地也胜过了在目标数据集上专门微调的方法。

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