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      Fooling thermal infrared pedestrian detectors in real world using small bulbs

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          Abstract

          Thermal infrared detection systems play an important role in many areas such as night security, autonomous driving, and body temperature detection. They have the unique advantages of passive imaging, temperature sensitivity and penetration. But the security of these systems themselves has not been fully explored, which poses risks in applying these systems. We propose a physical attack method with small bulbs on a board against the state of-the-art pedestrian detectors. Our goal is to make infrared pedestrian detectors unable to detect real-world pedestrians. Towards this goal, we first showed that it is possible to use two kinds of patches to attack the infrared pedestrian detector based on YOLOv3. The average precision (AP) dropped by 64.12% in the digital world, while a blank board with the same size caused the AP to drop by 29.69% only. After that, we designed and manufactured a physical board and successfully attacked YOLOv3 in the real world. In recorded videos, the physical board caused AP of the target detector to drop by 34.48%, while a blank board with the same size caused the AP to drop by 14.91% only. With the ensemble attack techniques, the designed physical board had good transferability to unseen detectors.

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          Author and article information

          Journal
          20 January 2021
          Article
          2101.08154
          d34c7a9f-4d68-4d89-986a-6f5ebe446d44

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          accepted by AAAI-21
          cs.CV

          Computer vision & Pattern recognition
          Computer vision & Pattern recognition

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