39 lines
1.2 KiB
Markdown
39 lines
1.2 KiB
Markdown
---
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title: "CLIP"
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created: 2026-07-04
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updated: 2026-07-04
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type: concept
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tags: [model, multimodal, vision-language, openai]
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sources: ["Radford et al., 2021"]
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---
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# CLIP (Contrastive Language-Image Pre-training)
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OpenAI 提出的双编码器视觉语言模型,通过大规模图文对对比学习训练,将图像和文本对齐到共享嵌入空间。
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## 架构
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- 视觉编码器:ViT 或 ResNet,输出单位嵌入
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- 文本编码器:Transformer,输出单位嵌入
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- 训练目标:对比损失(contrastive loss),最大化匹配图文对的相似度,最小化不匹配对的相似度
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## 关键影响
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CLIP 使 VLM 成为基础视觉组件,支持:
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- [[open-vocabulary-recognition|开放词表识别]](zero-shot classification)
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- 图文检索、检测、分割、VQA
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- 嵌入空间的语义可解释性(相似度反映语义关联)
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## 变体与后代
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- ViT-B/32、ViT-L/14 等不同视觉骨干
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- BLIP、ALIGN、SigLIP 等后续模型
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## 参考
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- [[vision-language-models|VLM]]
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- [[dual-encoder-vlm|双编码器 VLM]]
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- [[cosine-similarity-geometry|余弦相似度几何]]
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- [[semantic-robustness-certification-vlm-2026|Semantic Robustness Certification (ICML 2026)]](以 CLIP ViT-B/32 实验)
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- [[contrastive-learning|对比学习]]
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