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3 months ago

CurlingNet: Compositional Learning between Images and Text for Fashion IQ Data

Youngjae Yu Seunghwan Lee Yuncheol Choi Gunhee Kim

CurlingNet: Compositional Learning between Images and Text for Fashion IQ Data

Abstract

We present an approach named CurlingNet that can measure the semantic distance of composition of image-text embedding. In order to learn an effective image-text composition for the data in the fashion domain, our model proposes two key components as follows. First, the Delivery makes the transition of a source image in an embedding space. Second, the Sweeping emphasizes query-related components of fashion images in the embedding space. We utilize a channel-wise gating mechanism to make it possible. Our single model outperforms previous state-of-the-art image-text composition models including TIRG and FiLM. We participate in the first fashion-IQ challenge in ICCV 2019, for which ensemble of our model achieves one of the best performances.

Code Repositories

nashory/rtic-gcn-pytorch
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
image-retrieval-on-fashion-iqCurlingNet
(Recall@10+Recall@50)/2: 38.45

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CurlingNet: Compositional Learning between Images and Text for Fashion IQ Data | Papers | HyperAI