DG-DETR: Toward Domain Generalized Detection Transformer
By: Seongmin Hwang, Daeyoung Han, Moongu Jeon
Potential Business Impact:
Makes AI better at finding things in new places.
End-to-end Transformer-based detectors (DETRs) have demonstrated strong detection performance. However, domain generalization (DG) research has primarily focused on convolutional neural network (CNN)-based detectors, while paying little attention to enhancing the robustness of DETRs. In this letter, we introduce a Domain Generalized DEtection TRansformer (DG-DETR), a simple, effective, and plug-and-play method that improves out-of-distribution (OOD) robustness for DETRs. Specifically, we propose a novel domain-agnostic query selection strategy that removes domain-induced biases from object queries via orthogonal projection onto the instance-specific style space. Additionally, we leverage a wavelet decomposition to disentangle features into domain-invariant and domain-specific components, enabling synthesis of diverse latent styles while preserving the semantic features of objects. Experimental results validate the effectiveness of DG-DETR. Our code is available at https://github.com/sminhwang/DG-DETR.
Similar Papers
Style-Adaptive Detection Transformer for Single-Source Domain Generalized Object Detection
CV and Pattern Recognition
Teaches computers to see objects in new places.
SO-DETR: Leveraging Dual-Domain Features and Knowledge Distillation for Small Object Detection
CV and Pattern Recognition
Finds tiny things in pictures better.
RT-DATR:Real-time Unsupervised Domain Adaptive Detection Transformer with Adversarial Feature Learning
CV and Pattern Recognition
Helps AI see objects in new places.