## 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](https://github.com/winterwindwang/Full-coverage-camouflage-adversarial-attack/tree/gh-pages/src). ### Cases of digital attack #### Carmear distance is 3
before
after
#### Carmear distance is 5
before
after
#### Carmear distance is 10
before
after
### Cases of multi-view robust
before
after
The first row is the original detection result. The second row is the camouflaged detection result.
before
after
The first row is the original detection result. The second row is the camouflaged detection result. ### Ablation study #### Different combination of loss terms 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. #### Different initialization ways
original basic initialization random initialization zero initialization