Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Cross-Modality Attention with Semantic Graph Embedding for Multi-Label Classification

About

Multi-label image and video classification are fundamental yet challenging tasks in computer vision. The main challenges lie in capturing spatial or temporal dependencies between labels and discovering the locations of discriminative features for each class. In order to overcome these challenges, we propose to use cross-modality attention with semantic graph embedding for multi label classification. Based on the constructed label graph, we propose an adjacency-based similarity graph embedding method to learn semantic label embeddings, which explicitly exploit label relationships. Then our novel cross-modality attention maps are generated with the guidance of learned label embeddings. Experiments on two multi-label image classification datasets (MS-COCO and NUS-WIDE) show our method outperforms other existing state-of-the-arts. In addition, we validate our method on a large multi-label video classification dataset (YouTube-8M Segments) and the evaluation results demonstrate the generalization capability of our method.

Renchun You, Zhiyao Guo, Lei Cui, Xiang Long, Yingze Bao, Shilei Wen• 2019

Related benchmarks

TaskDatasetResultRank
Multi-Label ClassificationNUS-WIDE (test)
mAP61.4
112
Multi-Label ClassificationMS-COCO 2014 (test)
mAP83.8
81
Multi-label image recognitionMS-COCO 2014 (val)
mAP83.8
51
Multi-Label ClassificationMS-COCO (val)
mAP83.8
47
Multi-label Image ClassificationMS-COCO 2014 (test)
F1 Score (Top-3)74.9
24
Multi-Label ClassificationMS-COCO (test)
mAP83.8
24
Multi-Label ClassificationNUS-WIDE
mAP61.4
21
Multi-label Image ClassificationNUS-WIDE
CF1 (Top 3)55.7
15
Multi-label Image ClassificationMS-COCO
CP (Top-3)88.2
9
Action Unit DetectionBP4D+
AU1 F138.3
5
Showing 10 of 10 rows

Other info

Follow for update