Leveraging large-scale data can introduce performance gains on many computer vision tasks. Unfortunately, this does not happen in object detection when training a single model under multiple datasets together. We observe two main obstacles: taxonomy difference and bounding box annotation inconsistency, which introduces domain gaps in different datasets that prevents us from joint training. In this paper, we show that these two challenges can be effectively addressed by simply adapting object queries on language embedding of categories per dataset. We design a detection hub to dynamically adapt queries on category embedding based on the different distributions of datasets. Unlike previous methods attempted to learn a joint embedding for all ...
Deep CNN-based object detection systems have achieved remarkable success on several large-scale obj...
Unsupervised Domain Adaptation (UDA) for object detection aims to adapt a model trained on a source ...
This paper proposes a deep learning framework for decreasing large-scale domain shift problems in ob...
International audienceDeep CNN-based object detection systems have achieved remarkable success on se...
Deep CNN-based object detection systems have achieved remarkable success on several large-scale obje...
Cross-domain object detection is more challenging than object classification since multiple objects ...
Object detection has gained great improvements with the advances of convolutional neural networks an...
Recent advancements in developing pre-trained models using large-scale datasets have emphasized the ...
Abstract. Object detection and semantic segmentation are two strongly correlated tasks, yet typicall...
International audienceMost deep learning object detectors are based on the anchor mechanism and reso...
The dominant object detection approaches treat each dataset separately and fit towards a specific do...
The performance of object detection has steadily improved over the past decade, primarily due to imp...
Over the last several years it has been shown that image-based object detectors are sensitive to the...
Object detection is a fundamental computer vision task that estimates object classification labels a...
Most successful object classification and detection meth-ods rely on classifiers trained on large la...
Deep CNN-based object detection systems have achieved remarkable success on several large-scale obj...
Unsupervised Domain Adaptation (UDA) for object detection aims to adapt a model trained on a source ...
This paper proposes a deep learning framework for decreasing large-scale domain shift problems in ob...
International audienceDeep CNN-based object detection systems have achieved remarkable success on se...
Deep CNN-based object detection systems have achieved remarkable success on several large-scale obje...
Cross-domain object detection is more challenging than object classification since multiple objects ...
Object detection has gained great improvements with the advances of convolutional neural networks an...
Recent advancements in developing pre-trained models using large-scale datasets have emphasized the ...
Abstract. Object detection and semantic segmentation are two strongly correlated tasks, yet typicall...
International audienceMost deep learning object detectors are based on the anchor mechanism and reso...
The dominant object detection approaches treat each dataset separately and fit towards a specific do...
The performance of object detection has steadily improved over the past decade, primarily due to imp...
Over the last several years it has been shown that image-based object detectors are sensitive to the...
Object detection is a fundamental computer vision task that estimates object classification labels a...
Most successful object classification and detection meth-ods rely on classifiers trained on large la...
Deep CNN-based object detection systems have achieved remarkable success on several large-scale obj...
Unsupervised Domain Adaptation (UDA) for object detection aims to adapt a model trained on a source ...
This paper proposes a deep learning framework for decreasing large-scale domain shift problems in ob...