Faithful Generation
Faithful generation focuses on creating outputs—text, images, audio, code, or other data—that accurately reflect a given input or prompt, prioritizing correctness and adherence to specifications. Current research emphasizes improving the fidelity and controllability of generation using various model architectures, including diffusion models, transformers, and variational autoencoders, often incorporating techniques like retrieval-augmented generation and multi-agent frameworks. This field is significant for advancing AI capabilities across numerous domains, from improving large language model evaluations and enhancing human-computer interaction to creating more realistic synthetic data for training and analysis in various scientific fields.
Papers
Generation of Training Data from HD Maps in the Lanelet2 Framework
Fabian Immel, Richard Fehler, Frank Bieder, Christoph Stiller
Revolutionizing Text-to-Image Retrieval as Autoregressive Token-to-Voken Generation
Yongqi Li, Hongru Cai, Wenjie Wang, Leigang Qu, Yinwei Wei, Wenjie Li, Liqiang Nie, Tat-Seng Chua
VGBench: Evaluating Large Language Models on Vector Graphics Understanding and Generation
Bocheng Zou, Mu Cai, Jianrui Zhang, Yong Jae Lee
Leveraging Multimodal CycleGAN for the Generation of Anatomically Accurate Synthetic CT Scans from MRIs
Leonardo Crespi, Samuele Camnasio, Damiano Dei, Nicola Lambri, Pietro Mancosu, Marta Scorsetti, Daniele Loiacono
Tailor3D: Customized 3D Assets Editing and Generation with Dual-Side Images
Zhangyang Qi, Yunhan Yang, Mengchen Zhang, Long Xing, Xiaoyang Wu, Tong Wu, Dahua Lin, Xihui Liu, Jiaqi Wang, Hengshuang Zhao
Generation and De-Identification of Indian Clinical Discharge Summaries using LLMs
Sanjeet Singh, Shreya Gupta, Niralee Gupta, Naimish Sharma, Lokesh Srivastava, Vibhu Agarwal, Ashutosh Modi
ARTIST: Improving the Generation of Text-rich Images with Disentangled Diffusion Models and Large Language Models
Jianyi Zhang, Yufan Zhou, Jiuxiang Gu, Curtis Wigington, Tong Yu, Yiran Chen, Tong Sun, Ruiyi Zhang
MusicScore: A Dataset for Music Score Modeling and Generation
Yuheng Lin, Zheqi Dai, Qiuqiang Kong