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Main Authors: Wang, Wei, Li, Zhaowei, Xu, Qi, Li, Linfeng, Cai, YiQing, Jiang, Botian, Song, Hang, Hu, Xingcan, Wang, Pengyu, Xiao, Li
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2411.09691
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author Wang, Wei
Li, Zhaowei
Xu, Qi
Li, Linfeng
Cai, YiQing
Jiang, Botian
Song, Hang
Hu, Xingcan
Wang, Pengyu
Xiao, Li
author_facet Wang, Wei
Li, Zhaowei
Xu, Qi
Li, Linfeng
Cai, YiQing
Jiang, Botian
Song, Hang
Hu, Xingcan
Wang, Pengyu
Xiao, Li
contents Multi-modal large language models (MLLMs) have achieved remarkable success in fine-grained visual understanding across a range of tasks. However, they often encounter significant challenges due to inadequate alignment for fine-grained knowledge, which restricts their ability to accurately capture local details and attain a comprehensive global perception. While recent advancements have focused on aligning object expressions with grounding information, they typically lack explicit integration of object images, which contain affluent information beyond mere texts or coordinates. To bridge this gap, we introduce a novel fine-grained visual knowledge alignment method that effectively aligns and integrates multi-scale knowledge of objects, including texts, coordinates, and images. This innovative method is underpinned by our multi-scale fine-grained enhancement data synthesis pipeline, which provides over 300K essential training data to enhance alignment and improve overall performance. Furthermore, we present TinyGroundingGPT, a series of compact models optimized for high-level alignments. With a scale of approximately 3B parameters, TinyGroundingGPT achieves outstanding results in grounding tasks while delivering performance comparable to larger MLLMs in complex visual scenarios.
format Preprint
id arxiv_https___arxiv_org_abs_2411_09691
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Advancing Fine-Grained Visual Understanding with Multi-Scale Alignment in Multi-Modal Models
Wang, Wei
Li, Zhaowei
Xu, Qi
Li, Linfeng
Cai, YiQing
Jiang, Botian
Song, Hang
Hu, Xingcan
Wang, Pengyu
Xiao, Li
Computer Vision and Pattern Recognition
Multi-modal large language models (MLLMs) have achieved remarkable success in fine-grained visual understanding across a range of tasks. However, they often encounter significant challenges due to inadequate alignment for fine-grained knowledge, which restricts their ability to accurately capture local details and attain a comprehensive global perception. While recent advancements have focused on aligning object expressions with grounding information, they typically lack explicit integration of object images, which contain affluent information beyond mere texts or coordinates. To bridge this gap, we introduce a novel fine-grained visual knowledge alignment method that effectively aligns and integrates multi-scale knowledge of objects, including texts, coordinates, and images. This innovative method is underpinned by our multi-scale fine-grained enhancement data synthesis pipeline, which provides over 300K essential training data to enhance alignment and improve overall performance. Furthermore, we present TinyGroundingGPT, a series of compact models optimized for high-level alignments. With a scale of approximately 3B parameters, TinyGroundingGPT achieves outstanding results in grounding tasks while delivering performance comparable to larger MLLMs in complex visual scenarios.
title Advancing Fine-Grained Visual Understanding with Multi-Scale Alignment in Multi-Modal Models
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2411.09691