Deep Metric Learning by Online Soft Mining and Class-Aware Attention

November 04, 2018 ยท Entered Twilight ยท ๐Ÿ› AAAI Conference on Artificial Intelligence

๐ŸŒ… TWILIGHT: Old Age
Predates the code-sharing era โ€” a pioneer of its time

"Last commit was 5.0 years ago (โ‰ฅ5 year threshold)"

Evidence collected by the PWNC Scanner

Repo contents: 3625_OSM_CAA_AAAI19_V07.pdf, AAAI2019_V01.pdf, LICENSE, README.md, download.sh, upload.sh

Authors Xinshao Wang, Yang Hua, Elyor Kodirov, Guosheng Hu, Neil M. Robertson arXiv ID 1811.01459 Category cs.LG: Machine Learning Cross-listed stat.ML Citations 52 Venue AAAI Conference on Artificial Intelligence Repository https://github.com/XinshaoAmosWang/OSM_CAA_WeightedContrastiveLoss โญ 9 Last Checked 1 month ago
Abstract
Deep metric learning aims to learn a deep embedding that can capture the semantic similarity of data points. Given the availability of massive training samples, deep metric learning is known to suffer from slow convergence due to a large fraction of trivial samples. Therefore, most existing methods generally resort to sample mining strategies for selecting nontrivial samples to accelerate convergence and improve performance. In this work, we identify two critical limitations of the sample mining methods, and provide solutions for both of them. First, previous mining methods assign one binary score to each sample, i.e., dropping or keeping it, so they only selects a subset of relevant samples in a mini-batch. Therefore, we propose a novel sample mining method, called Online Soft Mining (OSM), which assigns one continuous score to each sample to make use of all samples in the mini-batch. OSM learns extended manifolds that preserve useful intraclass variances by focusing on more similar positives. Second, the existing methods are easily influenced by outliers as they are generally included in the mined subset. To address this, we introduce Class-Aware Attention (CAA) that assigns little attention to abnormal data samples. Furthermore, by combining OSM and CAA, we propose a novel weighted contrastive loss to learn discriminative embeddings. Extensive experiments on two fine-grained visual categorisation datasets and two video-based person re-identification benchmarks show that our method significantly outperforms the state-of-the-art.
Community shame:
Not yet rated
Community Contributions

Found the code? Know the venue? Think something is wrong? Let us know!

๐Ÿ“œ Similar Papers

In the same crypt โ€” Machine Learning