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Invisible Backdoor Attack with Dynamic Triggers against Person Re-identification
In recent years, person Re-identification (ReID) has rapidly progressed with
wide real-world applications, but also poses significant risks of adversarial
attacks. In this paper, we focus on the backdoor attack on deep ReID models.
Existing backdoor attack methods follow an all-to-one/all attack scenario,
where all the target classes in the test set have already been seen in the
training set. However, ReID is a much more complex fine-grained open-set
recognition problem, where the identities in the test set are not contained in
the training set. Thus, previous backdoor attack methods for classification are
not applicable for ReID. To ameliorate this issue, we propose a novel backdoor
attack on deep ReID under a new all-to-unknown scenario, called Dynamic
Triggers Invisible Backdoor Attack (DT-IBA). Instead of learning fixed triggers
for the target classes from the training set, DT-IBA can dynamically generate
new triggers for any unknown identities. Specifically, an identity hashing
network is proposed to first extract target identity information from a
reference image, which is then injected into the benign images by image
steganography. We extensively validate the effectiveness and stealthiness of
the proposed attack on benchmark datasets, and evaluate the effectiveness of
several defense methods against our attack
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