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Understanding the Risks of Asphalt Art to the Reliability of Vision-Based Perception Systems

Jin Ma, Abyad Enan, Long Cheng, Mashrur Chowdhury

Abstract

Artistic crosswalks featuring asphalt art, introduced by different organizations in recent years, aim to enhance the visibility and safety of pedestrians. However, their visual complexity may interfere with surveillance systems that rely on vision-based object detection models. In this study, we investigate the impact of asphalt art on pedestrian detection performance of a pretrained vision-based object detection model. We construct realistic crosswalk scenarios by compositing various street art patterns into a fixed surveillance scene and evaluate the model's performance in detecting pedestrians on asphalt-arted crosswalks under both benign and adversarial conditions. A benign case refers to pedestrian crosswalks painted with existing normal asphalt art, whereas an adversarial case involves digitally crafted or altered asphalt art perpetrated by an attacker. Our results show that while simple, color-based designs have minimal effect, complex artistic patterns, particularly those with high visual salience, can significantly degrade pedestrian detection performance. Furthermore, we demonstrate that adversarially crafted asphalt art can be exploited to deliberately obscure real pedestrians or generate non-existent pedestrian detections. These findings highlight a potential vulnerability in urban vision-based pedestrian surveillance systems, and underscore the importance of accounting for environmental visual variations when designing robust pedestrian perception models.

Understanding the Risks of Asphalt Art to the Reliability of Vision-Based Perception Systems

Abstract

Artistic crosswalks featuring asphalt art, introduced by different organizations in recent years, aim to enhance the visibility and safety of pedestrians. However, their visual complexity may interfere with surveillance systems that rely on vision-based object detection models. In this study, we investigate the impact of asphalt art on pedestrian detection performance of a pretrained vision-based object detection model. We construct realistic crosswalk scenarios by compositing various street art patterns into a fixed surveillance scene and evaluate the model's performance in detecting pedestrians on asphalt-arted crosswalks under both benign and adversarial conditions. A benign case refers to pedestrian crosswalks painted with existing normal asphalt art, whereas an adversarial case involves digitally crafted or altered asphalt art perpetrated by an attacker. Our results show that while simple, color-based designs have minimal effect, complex artistic patterns, particularly those with high visual salience, can significantly degrade pedestrian detection performance. Furthermore, we demonstrate that adversarially crafted asphalt art can be exploited to deliberately obscure real pedestrians or generate non-existent pedestrian detections. These findings highlight a potential vulnerability in urban vision-based pedestrian surveillance systems, and underscore the importance of accounting for environmental visual variations when designing robust pedestrian perception models.

Paper Structure

This paper contains 31 sections, 1 equation, 11 figures, 4 tables.

Figures (11)

  • Figure 1: Examples of real-world asphalt art installations (adopted from bloomberg).
  • Figure 2: Pedestrian alert warning testbed showing (a) the pedestrian crosswalk along with a pedestrian camera, and (b) an example of a captured image with the YOLOv7 pedestrian detection results.
  • Figure 3: The image creation process for benign asphalt art evaluation, including ① crosswalk mask annotation, ② asphalt art selection, ③ perspective warp transformation, and ④ applying to testing images.
  • Figure 4: Examples of asphalt art patterns used in the study, (i)-(iv) denote their categories.
  • Figure 5: PR curves of YOLOv7 with different asphalt art conditions.
  • ...and 6 more figures