Despite growing interest in object detection, very few works address the extremely practical problem of cross-domain robustness especially for automative applications. In order to prevent drops in performance due to domain shift, we introduce an unsupervised domain adaptation method built on the foundation of faster-RCNN with two domain adaptation components addressing the shift at the instance and image levels respectively and apply a consistency regularization between them. We also introduce a family of adaptation layers that leverage the squeeze excitation mechanism called SE Adaptors to improve domain attention and thus improves performance without any prior requirement of knowledge of the new target domain. Finally, we incorporate a ce...
Unsupervised cross-domain object detection has recently attracted considerable attention because of ...
Unsupervised domain adaptation involves knowledge transfer from a labeled source to unlabeled target...
This paper proposes a deep learning framework for decreasing large-scale domain shift problems in ob...
Cross-domain object detection is more challenging than object classification since multiple objects ...
We study the use of domain adaptation and transfer learning techniques as part of a framework for ad...
Existing object detection models assume both the training and test data are sampled from the same so...
While domain adaptation has been used to improve the performance of object detectors when the traini...
Domain adaptation methods are proposed to improve the performance of object detection in new domains...
The existing unsupervised domain adaptation (UDA) methods require not only labeled source samples bu...
Together with the development of deep neural networks, artificial intelligence is getting unpreceden...
Recent work in domain adaptation bridges different domains by adversarially learning a domain-invari...
Despite impressive progress in object detection over the last years, it is still an open challenge t...
We propose a simple but effective source-free domain adaptation (SFDA) method. Treating SFDA as an u...
Unsupervised Domain Adaptation (UDA) for object detection aims to adapt a model trained on a source ...
International audienceFaster R-CNN has become a standard model in deep-learning based object detecti...
Unsupervised cross-domain object detection has recently attracted considerable attention because of ...
Unsupervised domain adaptation involves knowledge transfer from a labeled source to unlabeled target...
This paper proposes a deep learning framework for decreasing large-scale domain shift problems in ob...
Cross-domain object detection is more challenging than object classification since multiple objects ...
We study the use of domain adaptation and transfer learning techniques as part of a framework for ad...
Existing object detection models assume both the training and test data are sampled from the same so...
While domain adaptation has been used to improve the performance of object detectors when the traini...
Domain adaptation methods are proposed to improve the performance of object detection in new domains...
The existing unsupervised domain adaptation (UDA) methods require not only labeled source samples bu...
Together with the development of deep neural networks, artificial intelligence is getting unpreceden...
Recent work in domain adaptation bridges different domains by adversarially learning a domain-invari...
Despite impressive progress in object detection over the last years, it is still an open challenge t...
We propose a simple but effective source-free domain adaptation (SFDA) method. Treating SFDA as an u...
Unsupervised Domain Adaptation (UDA) for object detection aims to adapt a model trained on a source ...
International audienceFaster R-CNN has become a standard model in deep-learning based object detecti...
Unsupervised cross-domain object detection has recently attracted considerable attention because of ...
Unsupervised domain adaptation involves knowledge transfer from a labeled source to unlabeled target...
This paper proposes a deep learning framework for decreasing large-scale domain shift problems in ob...