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Semantic Diversity Learning for Zero-Shot Multi-label Classification

About

Training a neural network model for recognizing multiple labels associated with an image, including identifying unseen labels, is challenging, especially for images that portray numerous semantically diverse labels. As challenging as this task is, it is an essential task to tackle since it represents many real-world cases, such as image retrieval of natural images. We argue that using a single embedding vector to represent an image, as commonly practiced, is not sufficient to rank both relevant seen and unseen labels accurately. This study introduces an end-to-end model training for multi-label zero-shot learning that supports semantic diversity of the images and labels. We propose to use an embedding matrix having principal embedding vectors trained using a tailored loss function. In addition, during training, we suggest up-weighting in the loss function image samples presenting higher semantic diversity to encourage the diversity of the embedding matrix. Extensive experiments show that our proposed method improves the zero-shot model's quality in tag-based image retrieval achieving SoTA results on several common datasets (NUS-Wide, COCO, Open Images).

Avi Ben-Cohen, Nadav Zamir, Emanuel Ben Baruch, Itamar Friedman, Lihi Zelnik-Manor• 2021

Related benchmarks

TaskDatasetResultRank
Multi-Label ClassificationNUS-WIDE 925/81 (unseen)
mAP (Mean Average Precision)25.9
43
Multi-Label ClassificationNUS-WIDE
mAP25.9
38
Multi-Label ClassificationMS COCO 48 seen / 17 unseen classes v1
Precision59
18
Multi-Label ClassificationOpen Images v4 (test)
Precision (K=10)35.3
10
Multi-label recognitionNUS-WIDE seen & unseen
F1 Score @ 318.5
10
Multi-label recognitionMS-COCO (seen and unseen)
P@359
6
Multi-label recognitionMS-COCO (unseen)
Precision@326.3
6
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