Graph-based Visual-Semantic Entanglement Network for Zero-shot Image
Recognition
- URL: http://arxiv.org/abs/2006.04648v2
- Date: Sat, 12 Jun 2021 01:21:22 GMT
- Title: Graph-based Visual-Semantic Entanglement Network for Zero-shot Image
Recognition
- Authors: Yang Hu, Guihua Wen, Adriane Chapman, Pei Yang, Mingnan Luo, Yingxue
Xu, Dan Dai, Wendy Hall
- Abstract summary: We propose the Graph-based Visual-Semantic Entanglement Network to conduct graph modeling of visual features.
Our method outperforms state-of-the-art approaches on multiple representative ZSL datasets.
- Score: 17.622748458955595
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Zero-shot learning uses semantic attributes to connect the search space of
unseen objects. In recent years, although the deep convolutional network brings
powerful visual modeling capabilities to the ZSL task, its visual features have
severe pattern inertia and lack of representation of semantic relationships,
which leads to severe bias and ambiguity. In response to this, we propose the
Graph-based Visual-Semantic Entanglement Network to conduct graph modeling of
visual features, which is mapped to semantic attributes by using a knowledge
graph, it contains several novel designs: 1. it establishes a multi-path
entangled network with the convolutional neural network (CNN) and the graph
convolutional network (GCN), which input the visual features from CNN to GCN to
model the implicit semantic relations, then GCN feedback the graph modeled
information to CNN features; 2. it uses attribute word vectors as the target
for the graph semantic modeling of GCN, which forms a self-consistent
regression for graph modeling and supervise GCN to learn more personalized
attribute relations; 3. it fuses and supplements the hierarchical
visual-semantic features refined by graph modeling into visual embedding. Our
method outperforms state-of-the-art approaches on multiple representative ZSL
datasets: AwA2, CUB, and SUN by promoting the semantic linkage modelling of
visual features.
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