BankTweak: Adversarial Attack against Multi-Object Trackers by Manipulating Feature Banks
Woojin Shin, Donghwa Kang, Daejin Choi, Brent Kang, Jinkyu Lee,, Hyeongboo Baek

TL;DR
BankTweak is a novel adversarial attack targeting multi-object trackers by manipulating feature banks, achieving persistent ID switches with high efficiency and robustness, exposing vulnerabilities in current tracking systems.
Contribution
The paper introduces BankTweak, a new attack method that manipulates feature banks to cause persistent ID switches without modifying object positions, improving attack robustness and efficiency.
Findings
BankTweak outperforms existing attacks on multiple trackers.
It induces persistent ID switches even after attack ends.
The method exposes vulnerabilities in the Hungarian matching process.
Abstract
Multi-object tracking (MOT) aims to construct moving trajectories for objects, and modern multi-object trackers mainly utilize the tracking-by-detection methodology. Initial approaches to MOT attacks primarily aimed to degrade the detection quality of the frames under attack, thereby reducing accuracy only in those specific frames, highlighting a lack of \textit{efficiency}. To improve efficiency, recent advancements manipulate object positions to cause persistent identity (ID) switches during the association phase, even after the attack ends within a few frames. However, these position-manipulating attacks have inherent limitations, as they can be easily counteracted by adjusting distance-related parameters in the association phase, revealing a lack of \textit{robustness}. In this paper, we present \textsf{BankTweak}, a novel adversarial attack designed for MOT trackers, which features…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Anomaly Detection Techniques and Applications · Forensic Toxicology and Drug Analysis
