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# Retrieval-Augmented Diffusion Models
Andreas Blattmann∗ Robin Rombach∗ Kaan Oktay Jonas Müller Björn Ommer LMU Munich, MCML & IWR, Heidelberg University, Germany
# Abstract
Novel architectures have recently improved generative image synthesis leading to excellent visual quality in various tasks. Much of this... | /Users/samarth/Documents/Samarth/CVPR/Nayana/pdfmathtranslate/miner/pdf/NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference.pdf | NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference_page_0 | [
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# Retrieval-Augmented Diffusion Models
Andreas Blattmann∗ Robin Rombach∗ Kaan Oktay Jonas Müller Björn Ommer LMU Munich, MCML & IWR, Heidelberg University, Germany
# Abstract
Novel architectures have recently improved generative image synthesis leading to excellent visual quality in various tasks. Much of this... | /Users/samarth/Documents/Samarth/CVPR/Nayana/pdfmathtranslate/miner/pdf/NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference.pdf | NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference_page_1 | [
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# Retrieval-Augmented Diffusion Models
Andreas Blattmann∗ Robin Rombach∗ Kaan Oktay Jonas Müller Björn Ommer LMU Munich, MCML & IWR, Heidelberg University, Germany
# Abstract
Novel architectures have recently improved generative image synthesis leading to excellent visual quality in various tasks. Much of this... | /Users/samarth/Documents/Samarth/CVPR/Nayana/pdfmathtranslate/miner/pdf/NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference.pdf | NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference_page_2 | [
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# Retrieval-Augmented Diffusion Models
Andreas Blattmann∗ Robin Rombach∗ Kaan Oktay Jonas Müller Björn Ommer LMU Munich, MCML & IWR, Heidelberg University, Germany
# Abstract
Novel architectures have recently improved generative image synthesis leading to excellent visual quality in various tasks. Much of this... | /Users/samarth/Documents/Samarth/CVPR/Nayana/pdfmathtranslate/miner/pdf/NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference.pdf | NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference_page_3 | [
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# Retrieval-Augmented Diffusion Models
Andreas Blattmann∗ Robin Rombach∗ Kaan Oktay Jonas Müller Björn Ommer LMU Munich, MCML & IWR, Heidelberg University, Germany
# Abstract
Novel architectures have recently improved generative image synthesis leading to excellent visual quality in various tasks. Much of this... | /Users/samarth/Documents/Samarth/CVPR/Nayana/pdfmathtranslate/miner/pdf/NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference.pdf | NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference_page_4 | [
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# Retrieval-Augmented Diffusion Models
Andreas Blattmann∗ Robin Rombach∗ Kaan Oktay Jonas Müller Björn Ommer LMU Munich, MCML & IWR, Heidelberg University, Germany
# Abstract
Novel architectures have recently improved generative image synthesis leading to excellent visual quality in various tasks. Much of this... | /Users/samarth/Documents/Samarth/CVPR/Nayana/pdfmathtranslate/miner/pdf/NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference.pdf | NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference_page_5 | [
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# Retrieval-Augmented Diffusion Models
Andreas Blattmann∗ Robin Rombach∗ Kaan Oktay Jonas Müller Björn Ommer LMU Munich, MCML & IWR, Heidelberg University, Germany
# Abstract
Novel architectures have recently improved generative image synthesis leading to excellent visual quality in various tasks. Much of this... | /Users/samarth/Documents/Samarth/CVPR/Nayana/pdfmathtranslate/miner/pdf/NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference.pdf | NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference_page_6 | [
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# Retrieval-Augmented Diffusion Models
Andreas Blattmann∗ Robin Rombach∗ Kaan Oktay Jonas Müller Björn Ommer LMU Munich, MCML & IWR, Heidelberg University, Germany
# Abstract
Novel architectures have recently improved generative image synthesis leading to excellent visual quality in various tasks. Much of this... | /Users/samarth/Documents/Samarth/CVPR/Nayana/pdfmathtranslate/miner/pdf/NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference.pdf | NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference_page_7 | [
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# Retrieval-Augmented Diffusion Models
Andreas Blattmann∗ Robin Rombach∗ Kaan Oktay Jonas Müller Björn Ommer LMU Munich, MCML & IWR, Heidelberg University, Germany
# Abstract
Novel architectures have recently improved generative image synthesis leading to excellent visual quality in various tasks. Much of this... | /Users/samarth/Documents/Samarth/CVPR/Nayana/pdfmathtranslate/miner/pdf/NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference.pdf | NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference_page_8 | [
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# Retrieval-Augmented Diffusion Models
Andreas Blattmann∗ Robin Rombach∗ Kaan Oktay Jonas Müller Björn Ommer LMU Munich, MCML & IWR, Heidelberg University, Germany
# Abstract
Novel architectures have recently improved generative image synthesis leading to excellent visual quality in various tasks. Much of this... | /Users/samarth/Documents/Samarth/CVPR/Nayana/pdfmathtranslate/miner/pdf/NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference.pdf | NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference_page_9 | [
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# Retrieval-Augmented Diffusion Models
Andreas Blattmann∗ Robin Rombach∗ Kaan Oktay Jonas Müller Björn Ommer LMU Munich, MCML & IWR, Heidelberg University, Germany
# Abstract
Novel architectures have recently improved generative image synthesis leading to excellent visual quality in various tasks. Much of this... | /Users/samarth/Documents/Samarth/CVPR/Nayana/pdfmathtranslate/miner/pdf/NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference.pdf | NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference_page_10 | [
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# Retrieval-Augmented Diffusion Models
Andreas Blattmann∗ Robin Rombach∗ Kaan Oktay Jonas Müller Björn Ommer LMU Munich, MCML & IWR, Heidelberg University, Germany
# Abstract
Novel architectures have recently improved generative image synthesis leading to excellent visual quality in various tasks. Much of this... | /Users/samarth/Documents/Samarth/CVPR/Nayana/pdfmathtranslate/miner/pdf/NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference.pdf | NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference_page_11 | [
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# Retrieval-Augmented Diffusion Models
Andreas Blattmann∗ Robin Rombach∗ Kaan Oktay Jonas Müller Björn Ommer LMU Munich, MCML & IWR, Heidelberg University, Germany
# Abstract
Novel architectures have recently improved generative image synthesis leading to excellent visual quality in various tasks. Much of this... | /Users/samarth/Documents/Samarth/CVPR/Nayana/pdfmathtranslate/miner/pdf/NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference.pdf | NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference_page_12 | [
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# Retrieval-Augmented Diffusion Models
Andreas Blattmann∗ Robin Rombach∗ Kaan Oktay Jonas Müller Björn Ommer LMU Munich, MCML & IWR, Heidelberg University, Germany
# Abstract
Novel architectures have recently improved generative image synthesis leading to excellent visual quality in various tasks. Much of this... | /Users/samarth/Documents/Samarth/CVPR/Nayana/pdfmathtranslate/miner/pdf/NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference.pdf | NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference_page_13 | [
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# Retrieval-Augmented Diffusion Models
Andreas Blattmann∗ Robin Rombach∗ Kaan Oktay Jonas Müller Björn Ommer LMU Munich, MCML & IWR, Heidelberg University, Germany
# Abstract
Novel architectures have recently improved generative image synthesis leading to excellent visual quality in various tasks. Much of this... | /Users/samarth/Documents/Samarth/CVPR/Nayana/pdfmathtranslate/miner/pdf/NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference.pdf | NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference_page_14 | [
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"$$\np_{\\theta,\\mathcal{D},\\xi_{k}}(x)=p_{\\theta}(x\\mid\\xi_{k}(x,\\mathcal{D}))=p_{\\theta}(x\\mid\\mathcal{M}_{\\mathcal{D}}^{(k)})\n$$",
"$$\np_{\\theta,\\mathcal{D},\\xi_{k}}(x)=p_{\\theta}(x\\mid\\{\\phi(y)\\mid y\\in\\xi_{k}(x,\\mathcal{D})\\}).\n$$",
"$$\n\\operatorname*{min}_{\\theta}\\mathcal{L}=\... | [
{
"caption": [
"Figure 1: Our semi-parametric model outperforms the unconditional SOTA model ADM [15] on ImageNet [13] and even reaches the class-conditional ADM (ADM w/ classifier), while reducing parameter count. $|\\mathcal D|$ : Number of instances in database at inference; $|\\theta|$ : Number of tra... | [] | 14 | [
1224,
1584
] | |
# Retrieval-Augmented Diffusion Models
Andreas Blattmann∗ Robin Rombach∗ Kaan Oktay Jonas Müller Björn Ommer LMU Munich, MCML & IWR, Heidelberg University, Germany
# Abstract
Novel architectures have recently improved generative image synthesis leading to excellent visual quality in various tasks. Much of this... | /Users/samarth/Documents/Samarth/CVPR/Nayana/pdfmathtranslate/miner/pdf/NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference.pdf | NeurIPS-2022-retrieval-augmented-diffusion-models-Paper-Conference_page_15 | [
{
"category_id": 1,
"latex": null,
"poly": [
363.18609619140625,
539.1590576171875,
841.7095336914062,
539.1590576171875,
841.7095336914062,
571.1865844726562,
363.18609619140625,
571.1865844726562
],
"score": 0.9999908208847046,
"text": null
... | [] | [
"$$\np_{\\theta,\\mathcal{D},\\xi_{k}}(x)=p_{\\theta}(x\\mid\\xi_{k}(x,\\mathcal{D}))=p_{\\theta}(x\\mid\\mathcal{M}_{\\mathcal{D}}^{(k)})\n$$",
"$$\np_{\\theta,\\mathcal{D},\\xi_{k}}(x)=p_{\\theta}(x\\mid\\{\\phi(y)\\mid y\\in\\xi_{k}(x,\\mathcal{D})\\}).\n$$",
"$$\n\\operatorname*{min}_{\\theta}\\mathcal{L}=\... | [
{
"caption": [
"Figure 1: Our semi-parametric model outperforms the unconditional SOTA model ADM [15] on ImageNet [13] and even reaches the class-conditional ADM (ADM w/ classifier), while reducing parameter count. $|\\mathcal D|$ : Number of instances in database at inference; $|\\theta|$ : Number of tra... | [] | 15 | [
1224,
1584
] |
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