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InkDrop: Invisible Backdoor Attacks Against Dataset Condensation

About

Dataset Condensation (DC) is a data-efficient learning paradigm that synthesizes small yet informative datasets, enabling models to match the performance of full-data training. However, recent work exposes a critical vulnerability of DC to backdoor attacks, where malicious patterns (\textit{e.g.}, triggers) are implanted into the condensation dataset, inducing targeted misclassification on specific inputs. Existing attacks always prioritize attack effectiveness and model utility, overlooking the crucial dimension of stealthiness. To bridge this gap, we propose InkDrop, which enhances the imperceptibility of malicious manipulation without degrading attack effectiveness and model utility. InkDrop leverages the inherent uncertainty near model decision boundaries, where minor input perturbations can induce semantic shifts, to construct a stealthy and effective backdoor attack. Specifically, InkDrop first selects candidate samples near the target decision boundary that exhibit latent semantic affinity to the target class. It then learns instance-dependent perturbations constrained by perceptual and spatial consistency, embedding targeted malicious behavior into the condensed dataset. Extensive experiments across diverse datasets validate the overall effectiveness of InkDrop, demonstrating its ability to integrate adversarial intent into condensed datasets while preserving model utility and minimizing detectability. Our code is available at https://github.com/lvdongyi/InkDrop.

He Yang, Dongyi Lv, Song Ma, Wei Xi, Zhi Wang, Hanlin Gu, Yajie Wang• 2026

Related benchmarks

TaskDatasetResultRank
Backdoor AttackFMNIST
ASR99.72
75
Backdoor AttackCIFAR10
Attack Success Rate100
70
Backdoor Attack in Dataset CondensationSVHN
CTA88.46
43
Backdoor Attack in Dataset CondensationCIFAR10
Clean Trigger Accuracy (CTA)72.63
43
Backdoor Attack in Dataset CondensationFMNIST
CTA85.69
43
Backdoor Attack in Dataset CondensationTiny-ImageNet
CTA44.74
43
Backdoor Attack in Dataset CondensationSTL10
CTA67.74
31
Backdoor AttackSVHN
Attack Success Rate100
27
Backdoor AttackSTL10
Attack Success Rate (ASR)100
21
Backdoor AttackTiny-ImageNet
CTA50
15
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