Adversarial Metric Attack and Defense for Person Re-identification
Person re-identification (re-ID) has attracted much attention recently due to its great importance in video surveillance. In general, distance metrics used to identify two person images are expected to be robust under various appearance changes. However, our work observes the extreme vulnerability o...
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Zusammenfassung: | Person re-identification (re-ID) has attracted much attention recently due to
its great importance in video surveillance. In general, distance metrics used
to identify two person images are expected to be robust under various
appearance changes. However, our work observes the extreme vulnerability of
existing distance metrics to adversarial examples, generated by simply adding
human-imperceptible perturbations to person images. Hence, the security danger
is dramatically increased when deploying commercial re-ID systems in video
surveillance. Although adversarial examples have been extensively applied for
classification analysis, it is rarely studied in metric analysis like person
re-identification. The most likely reason is the natural gap between the
training and testing of re-ID networks, that is, the predictions of a re-ID
network cannot be directly used during testing without an effective metric. In
this work, we bridge the gap by proposing Adversarial Metric Attack, a parallel
methodology to adversarial classification attacks. Comprehensive experiments
clearly reveal the adversarial effects in re-ID systems. Meanwhile, we also
present an early attempt of training a metric-preserving network, thereby
defending the metric against adversarial attacks. At last, by benchmarking
various adversarial settings, we expect that our work can facilitate the
development of adversarial attack and defense in metric-based applications. |
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DOI: | 10.48550/arxiv.1901.10650 |