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CP-mtML: Coupled Projection Multi-Task Metric Learning for Large Scale Face Retrieval

机译:CP-mtML:用于大规模面部检索的耦合投影多任务度量学习

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We propose a novel Coupled Projection multi-task Metric Learning (CP-mtML) method for large scale face retrieval. In contrast to previous works which were limited to low dimensional features and small datasets, the proposed method scales to large datasets with high dimensional face descriptors. It utilises pairwise (dis-)similarity constraints as supervision and hence does not require exhaustive class annotation for every training image. While, traditionally, multi-task learning methods have been validated on same dataset but different tasks, we work on the more challenging setting with heterogeneous datasets and different tasks. We show empirical validation on multiple face image datasets of different facial traits, e.g. identity, age and expression. We use classic Local Binary Pattern (LBP) descriptors along with the recent Deep Convolutional Neural Network (CNN) features. The experiments clearly demonstrate the scalability and improved performance of the proposed method on the tasks of identity and age based face image retrieval compared to competitive existing methods, on the standard datasets and with the presence of a million distractor face images.
机译:我们提出了一种新颖的耦合投影多任务度量学习(CP-mtML)方法,用于大规模人脸检索。与以前的工作仅限于低维特征和小型数据集相比,该方法可扩展到具有高维面部描述符的大型数据集。它利用成对(非)相似性约束作为监督,因此不需要为每个训练图像进行详尽的类注释。传统上,虽然多任务学习方法已在相同数据集但不同任务上得到验证,但我们在异构数据集和不同任务下进行更具挑战性的设置。我们在不同面部特征的多个面部图像数据集上显示了经验验证,例如身份,年龄和表达方式。我们使用经典的本地二进制模式(LBP)描述符以及最新的深度卷积神经网络(CNN)功能。实验清楚地证明,与竞争性现有方法相比,在标准数据集上并且在存在一百万个干扰者面部图像的情况下,该方法在基于身份和年龄的面部图像检索任务上具有可扩展性和改进的性能。

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