CVApr 11, 2016

CP-mtML: Coupled Projection multi-task Metric Learning for Large Scale Face Retrieval

arXiv:1604.02975v155 citations
Originality Incremental advance
AI Analysis

This work addresses scalable face retrieval for applications like security or social media, but it is incremental as it builds on multi-task metric learning with new datasets and features.

The authors tackled large-scale face retrieval by proposing CP-mtML, a method that scales to high-dimensional features and heterogeneous datasets, showing improved performance on identity and age retrieval tasks with up to a million distractor images.

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.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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