Authors
Jiahuan Zhou, Bing Su, Ying Wu
Publication date
2022/8/19
Journal
IEEE Transactions on Pattern Analysis and Machine Intelligence
Volume
45
Issue
4
Pages
4368-4383
Publisher
IEEE
Description
Existing solutions to instance-level visual identification usually aim to learn faithful and discriminative feature extractors from offline training data and directly use them for the unseen online testing data. However, their performance is largely limited due to the severe distribution shifting issue between training and testing samples. Therefore, we propose a novel online group-metric adaptation model to adapt the offline learned identification models for the online data by learning a series of metrics for all sharing-subsets. Each sharing-subset is obtained from the proposed novel frequent sharing-subset mining module and contains a group of testing samples that share strong visual similarity relationships to each other. Furthermore, to handle potentially large-scale testing samples, we introduce self-paced learning (SPL) to gradually include samples into adaptation from easy to difficult which elaborately simulates the …
Total citations
2023202412
Scholar articles
J Zhou, B Su, Y Wu - IEEE Transactions on Pattern Analysis and Machine …, 2022