Person detection has attracted great attention in the computer vision area and is an imperative element in human-centric computer vision. Although the predictive performances of person detection networks have been improved dramatically, they are vulnerable to adversarial patch attacks. Changing the pixels in a restricted region can easily fool the person detection network in safety-critical applications such as autonomous driving and security systems. Despite the necessity of countering adversarial patch attacks, very few efforts have been dedicated to defending person detection against adversarial patch attack. In this paper, we propose a novel defense strategy that defends against an adversarial patch attack by optimizing a defensive frame for person detection. The defensive frame alleviates the effect of the adversarial patch while maintaining person detection performance with clean person. The proposed defensive frame in the person detection is generated with a competitive learning algorithm which makes an iterative competition between detection threatening module and detection shielding module in person detection. Comprehensive experimental results demonstrate that the proposed method effectively defends person detection against adversarial patch attacks.
翻译:虽然个人探测网络的预测性能已大为改善,但很容易受到对抗性补丁攻击; 改变限制区域内的象素很容易在安全关键应用方面愚弄个人探测网络,例如自动驾驶和安全系统; 尽管有必要对抗对抗性补丁攻击,但几乎没有专门致力于保护人探测以对抗对抗性补丁攻击的新的防御战略。 在本文件中,我们提议了一项新的防御战略,通过优化防御性人体探测框架来防御对抗性补丁攻击; 防御性框架减轻了对抗性补丁的效果,同时保持与清洁人员对人进行探测; 拟议的人员探测防御性框架是用竞争性学习算法产生的,这种算法使得探测威胁模块和探测防护模块在人员探测中相互竞争。 全面实验结果显示,拟议的方法有效地保护了对对抗性补丁攻击的人探测。