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Main Authors: Kirchner, Joris, Gudi, Amogh, Bittner, Marian, Raman, Chirag
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2602.19219
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author Kirchner, Joris
Gudi, Amogh
Bittner, Marian
Raman, Chirag
author_facet Kirchner, Joris
Gudi, Amogh
Bittner, Marian
Raman, Chirag
contents Deep learning vision models excel with abundant supervision, but many applications face label scarcity and class imbalance. Controllable image editing can augment scarce labeled data, yet edits often introduce artifacts and entangle non-target attributes. We study this in facial expression analysis, targeting Action Unit (AU) manipulation where annotation is costly and AU co-activation drives entanglement. We present a facial manipulation method that operates in the semantic latent space of a pre-trained face generator (Diffusion Autoencoder). Using lightweight linear models, we reduce entanglement of semantic features via (i) dependency-aware conditioning that accounts for AU co-activation, and (ii) orthogonal projection that removes nuisance attribute directions (e.g., glasses), together with an expression neutralization step to enable absolute AU edit. We use these edits to balance AU occurrence by editing labeled faces and to diversify identities/demographics via controlled synthesis. Augmenting AU detector training with the generated data improves accuracy and yields more disentangled predictions with fewer co-activation shortcuts, outperforming alternative data-efficient training strategies and suggesting improvements similar to what would require substantially more labeled data in our learning-curve analysis. Compared to prior methods, our edits are stronger, produce fewer artifacts, and preserve identity better.
format Preprint
id arxiv_https___arxiv_org_abs_2602_19219
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Controlled Face Manipulation and Synthesis for Data Augmentation
Kirchner, Joris
Gudi, Amogh
Bittner, Marian
Raman, Chirag
Computer Vision and Pattern Recognition
Machine Learning
Deep learning vision models excel with abundant supervision, but many applications face label scarcity and class imbalance. Controllable image editing can augment scarce labeled data, yet edits often introduce artifacts and entangle non-target attributes. We study this in facial expression analysis, targeting Action Unit (AU) manipulation where annotation is costly and AU co-activation drives entanglement. We present a facial manipulation method that operates in the semantic latent space of a pre-trained face generator (Diffusion Autoencoder). Using lightweight linear models, we reduce entanglement of semantic features via (i) dependency-aware conditioning that accounts for AU co-activation, and (ii) orthogonal projection that removes nuisance attribute directions (e.g., glasses), together with an expression neutralization step to enable absolute AU edit. We use these edits to balance AU occurrence by editing labeled faces and to diversify identities/demographics via controlled synthesis. Augmenting AU detector training with the generated data improves accuracy and yields more disentangled predictions with fewer co-activation shortcuts, outperforming alternative data-efficient training strategies and suggesting improvements similar to what would require substantially more labeled data in our learning-curve analysis. Compared to prior methods, our edits are stronger, produce fewer artifacts, and preserve identity better.
title Controlled Face Manipulation and Synthesis for Data Augmentation
topic Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2602.19219