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Main Authors: Chen, Changjian, Lv, Fei, Guan, Yalong, Wang, Pengcheng, Yu, Shengjie, Zhang, Yifan, Tang, Zhuo
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.16839
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author Chen, Changjian
Lv, Fei
Guan, Yalong
Wang, Pengcheng
Yu, Shengjie
Zhang, Yifan
Tang, Zhuo
author_facet Chen, Changjian
Lv, Fei
Guan, Yalong
Wang, Pengcheng
Yu, Shengjie
Zhang, Yifan
Tang, Zhuo
contents The performance of computer vision models in certain real-world applications (e.g., rare wildlife observation) is limited by the small number of available images. Expanding datasets using pre-trained generative models is an effective way to address this limitation. However, since the automatic generation process is uncontrollable, the generated images are usually limited in diversity, and some of them are undesired. In this paper, we propose a human-guided image generation method for more controllable dataset expansion. We develop a multi-modal projection method with theoretical guarantees to facilitate the exploration of both the original and generated images. Based on the exploration, users refine the prompts and re-generate images for better performance. Since directly refining the prompts is challenging for novice users, we develop a sample-level prompt refinement method to make it easier. With this method, users only need to provide sample-level feedback (e.g., which samples are undesired) to obtain better prompts. The effectiveness of our method is demonstrated through the quantitative evaluation of the multi-modal projection method, improved model performance in the case study for both classification and object detection tasks, and positive feedback from the experts.
format Preprint
id arxiv_https___arxiv_org_abs_2412_16839
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Human-Guided Image Generation for Expanding Small-Scale Training Image Datasets
Chen, Changjian
Lv, Fei
Guan, Yalong
Wang, Pengcheng
Yu, Shengjie
Zhang, Yifan
Tang, Zhuo
Computer Vision and Pattern Recognition
Artificial Intelligence
The performance of computer vision models in certain real-world applications (e.g., rare wildlife observation) is limited by the small number of available images. Expanding datasets using pre-trained generative models is an effective way to address this limitation. However, since the automatic generation process is uncontrollable, the generated images are usually limited in diversity, and some of them are undesired. In this paper, we propose a human-guided image generation method for more controllable dataset expansion. We develop a multi-modal projection method with theoretical guarantees to facilitate the exploration of both the original and generated images. Based on the exploration, users refine the prompts and re-generate images for better performance. Since directly refining the prompts is challenging for novice users, we develop a sample-level prompt refinement method to make it easier. With this method, users only need to provide sample-level feedback (e.g., which samples are undesired) to obtain better prompts. The effectiveness of our method is demonstrated through the quantitative evaluation of the multi-modal projection method, improved model performance in the case study for both classification and object detection tasks, and positive feedback from the experts.
title Human-Guided Image Generation for Expanding Small-Scale Training Image Datasets
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2412.16839