Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Multi-view Adversarial Discriminator: Mine the Non-causal Factors for Object Detection in Unseen Domains

About

Domain shift degrades the performance of object detection models in practical applications. To alleviate the influence of domain shift, plenty of previous work try to decouple and learn the domain-invariant (common) features from source domains via domain adversarial learning (DAL). However, inspired by causal mechanisms, we find that previous methods ignore the implicit insignificant non-causal factors hidden in the common features. This is mainly due to the single-view nature of DAL. In this work, we present an idea to remove non-causal factors from common features by multi-view adversarial training on source domains, because we observe that such insignificant non-causal factors may still be significant in other latent spaces (views) due to the multi-mode structure of data. To summarize, we propose a Multi-view Adversarial Discriminator (MAD) based domain generalization model, consisting of a Spurious Correlations Generator (SCG) that increases the diversity of source domain by random augmentation and a Multi-View Domain Classifier (MVDC) that maps features to multiple latent spaces, such that the non-causal factors are removed and the domain-invariant features are purified. Extensive experiments on six benchmarks show our MAD obtains state-of-the-art performance.

Mingjun Xu, Lingyun Qin, Weijie Chen, Shiliang Pu, Lei Zhang• 2023

Related benchmarks

TaskDatasetResultRank
Object DetectionFoggy Cityscapes (test)
mAP (Mean Average Precision)38.6
108
Object DetectionBDD100K (val)
mAP28
60
Object DetectionFoggy Cityscapes
mAP38.6
47
Object DetectionRainCityscape
AP0.423
24
Object DetectionBDD100K
mAP28
19
Object DetectionIF-CCT 1.0 (test)
Rabbit AP30.2
8
Lung Nodule DetectionIF-LUNA16
mAP33.5
8
Object DetectionIF-CARLA nighttime (val)
AP (Person)30.9
8
Showing 8 of 8 rows

Other info

Follow for update