LEARNING
HardFlow:通过轨迹优化实现流匹配模型的硬约束采样
Li Z, Alim K, Azizan N
- 发表年份
- 2026
- 期刊
- IEEE transactions on pattern analysis and machine intelligence
摘要
该论文提出了一种名为HardFlow的方法,用于在流匹配模型中处理硬约束下的采样问题。通过将轨迹优化技术融入生成过程,该方法能够确保生成的样本严格满足预设的约束条件。
关键词
flow-matchingtrajectory optimizationhard constraintssamplinggenerative models
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