Training Image
Training image research focuses on optimizing the use of images for training machine learning models, particularly in scenarios with limited data. Current efforts concentrate on improving data augmentation techniques using diffusion models and large language models to generate synthetic training images that maintain data distribution fidelity and enhance model robustness against attacks. This research is crucial for advancing various applications, including medical image analysis, object detection, and image generation, where acquiring sufficient labeled data is often challenging or expensive. The development of more efficient and effective training image strategies directly impacts the accuracy, generalizability, and reliability of machine learning models across numerous domains.
Papers
DFM-X: Augmentation by Leveraging Prior Knowledge of Shortcut Learning
Shunxin Wang, Christoph Brune, Raymond Veldhuis, Nicola Strisciuglio
SegPrompt: Boosting Open-world Segmentation via Category-level Prompt Learning
Muzhi Zhu, Hengtao Li, Hao Chen, Chengxiang Fan, Weian Mao, Chenchen Jing, Yifan Liu, Chunhua Shen
Training on Thin Air: Improve Image Classification with Generated Data
Yongchao Zhou, Hshmat Sahak, Jimmy Ba
Delving Deeper into Data Scaling in Masked Image Modeling
Cheng-Ze Lu, Xiaojie Jin, Qibin Hou, Jun Hao Liew, Ming-Ming Cheng, Jiashi Feng
Networks are Slacking Off: Understanding Generalization Problem in Image Deraining
Jinjin Gu, Xianzheng Ma, Xiangtao Kong, Yu Qiao, Chao Dong