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Main Authors: Wang, Jiaxi, Hu, Wenhui, Liu, Xueyang, Wu, Beihu, Qiu, Yuting, Cai, YingYing
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2312.17648
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author Wang, Jiaxi
Hu, Wenhui
Liu, Xueyang
Wu, Beihu
Qiu, Yuting
Cai, YingYing
author_facet Wang, Jiaxi
Hu, Wenhui
Liu, Xueyang
Wu, Beihu
Qiu, Yuting
Cai, YingYing
contents Visual grounding aims to align visual information of specific regions of images with corresponding natural language expressions. Current visual grounding methods leverage pre-trained visual and language backbones independently to obtain visual features and linguistic features. Although these two types of features are then fused through elaborately designed networks, the heterogeneity of the features renders them unsuitable for multi-modal reasoning. This problem arises from the domain gap between the single-modal pre-training backbones used in current visual grounding methods, which can hardly be bridged by the traditional end-to-end training method. To alleviate this, our work proposes an Empowering Pre-trained Model for Visual Grounding (EpmVG) framework, which distills a multimodal pre-trained model to guide the visual grounding task. EpmVG relies on a novel cross-modal distillation mechanism that can effectively introduce the consistency information of images and texts from the pre-trained model, reducing the domain gap in the backbone networks, and thereby improving the performance of the model in the visual grounding task. Extensive experiments have been conducted on five conventionally used datasets, and the results demonstrate that our method achieves better performance than state-of-the-art methods.
format Preprint
id arxiv_https___arxiv_org_abs_2312_17648
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Bridging Modality Gap for Visual Grounding with Effecitve Cross-modal Distillation
Wang, Jiaxi
Hu, Wenhui
Liu, Xueyang
Wu, Beihu
Qiu, Yuting
Cai, YingYing
Computer Vision and Pattern Recognition
Artificial Intelligence
Visual grounding aims to align visual information of specific regions of images with corresponding natural language expressions. Current visual grounding methods leverage pre-trained visual and language backbones independently to obtain visual features and linguistic features. Although these two types of features are then fused through elaborately designed networks, the heterogeneity of the features renders them unsuitable for multi-modal reasoning. This problem arises from the domain gap between the single-modal pre-training backbones used in current visual grounding methods, which can hardly be bridged by the traditional end-to-end training method. To alleviate this, our work proposes an Empowering Pre-trained Model for Visual Grounding (EpmVG) framework, which distills a multimodal pre-trained model to guide the visual grounding task. EpmVG relies on a novel cross-modal distillation mechanism that can effectively introduce the consistency information of images and texts from the pre-trained model, reducing the domain gap in the backbone networks, and thereby improving the performance of the model in the visual grounding task. Extensive experiments have been conducted on five conventionally used datasets, and the results demonstrate that our method achieves better performance than state-of-the-art methods.
title Bridging Modality Gap for Visual Grounding with Effecitve Cross-modal Distillation
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2312.17648