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Datasetdm: Synthesizing data with perception annotations using diffusion models

May 1, 2023ยท
Weijia Wu
,
Yuzhong Zhao
,
Hao Chen
,
Yuchao Gu
,
Rui Zhao
,
Yefei He
,
Hong Zhou
,
Mike Zheng Shou
,
Chunhua Shen
ยท 0 min read
Cite
Type
Journal article
Publication
NeurIPS 2023
Last updated on May 1, 2023

← Paragraph-to-image generation with information-enriched diffusion model Sep 1, 2023
Ptqd: Accurate post-training quantization for diffusion models May 1, 2023 →

ยฉ 2025 Me. This work is licensed under CC BY NC ND 4.0

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