FCA/README.md

20 lines
1.0 KiB
Markdown
Raw Normal View History

2021-09-12 16:33:38 +08:00
## FCA: Learning a 3D Full-coverage Vehicle Camouflage for Multi-view Physical Adversarial Attack
Case study of the FCA. The code can be find in [FCA]([http://]).
### Cases of digital attack
!(image)[https://github.com/winterwindwang/Full-coverage-camouflage-adversarial-attack/blob/gh-pages/assets/distance_10_elevation_30_adv_pred.gif]
### Cases of multi-view robust
### Ablation study
#### Different combination of loss terms
2021-09-12 11:07:10 +08:00
![image](https://github.com/winterwindwang/Full-coverage-camouflage-adversarial-attack/blob/gh-pages/assets/abaltion_study_loss.png)
2021-09-12 16:33:38 +08:00
As we can see from the Figure, different loss term plays different role in attacking. For example, the camouflaged car generated by `obj+smooth (we omit the smooth loss, and denotes as obj)` hardly hidden from the detector, while the camouflaged car generated by `iou` successfully suppress the detecting bounding box of the car region, and finally the camouflaged car generated by `cls` successfully make the detector to misclassify the car to anther category.