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Main Authors: Ren, Yunhan, Li, Bo, Zhang, Chengyang, Zhang, Yong, Yin, Baocai
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2403.12466
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author Ren, Yunhan
Li, Bo
Zhang, Chengyang
Zhang, Yong
Yin, Baocai
author_facet Ren, Yunhan
Li, Bo
Zhang, Chengyang
Zhang, Yong
Yin, Baocai
contents Existing object localization methods are tailored to locate specific classes of objects, relying heavily on abundant labeled data for model optimization. However, acquiring large amounts of labeled data is challenging in many real-world scenarios, significantly limiting the broader application of localization models. To bridge this research gap, this paper defines a novel task named Few-Shot Object Localization (FSOL), which aims to achieve precise localization with limited samples. This task achieves generalized object localization by leveraging a small number of labeled support samples to query the positional information of objects within corresponding images. To advance this field, we design an innovative high-performance baseline model. This model integrates a dual-path feature augmentation module to enhance shape association and gradient differences between supports and query images, alongside a self query module to explore the association between feature maps and query images. Experimental results demonstrate a significant performance improvement of our approach in the FSOL task, establishing an efficient benchmark for further research. All codes and data are available at https://github.com/Ryh1218/FSOL.
format Preprint
id arxiv_https___arxiv_org_abs_2403_12466
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Few-shot Object Localization
Ren, Yunhan
Li, Bo
Zhang, Chengyang
Zhang, Yong
Yin, Baocai
Computer Vision and Pattern Recognition
Existing object localization methods are tailored to locate specific classes of objects, relying heavily on abundant labeled data for model optimization. However, acquiring large amounts of labeled data is challenging in many real-world scenarios, significantly limiting the broader application of localization models. To bridge this research gap, this paper defines a novel task named Few-Shot Object Localization (FSOL), which aims to achieve precise localization with limited samples. This task achieves generalized object localization by leveraging a small number of labeled support samples to query the positional information of objects within corresponding images. To advance this field, we design an innovative high-performance baseline model. This model integrates a dual-path feature augmentation module to enhance shape association and gradient differences between supports and query images, alongside a self query module to explore the association between feature maps and query images. Experimental results demonstrate a significant performance improvement of our approach in the FSOL task, establishing an efficient benchmark for further research. All codes and data are available at https://github.com/Ryh1218/FSOL.
title Few-shot Object Localization
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2403.12466