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DN-DETR: Accelerate DETR Training by Introducing Query DeNoising.

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    |November 29, 2023
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    This study introduces a denoising training method to accelerate DETR (DEtection TRansformer) training by stabilizing bipartite graph matching. This approach significantly improves convergence speed and object detection performance.

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    Area of Science:

    • Computer Vision
    • Machine Learning
    • Deep Learning

    Background:

    • DETR (DEtection TRansformer) and similar methods suffer from slow convergence due to unstable bipartite graph matching in early training stages.
    • This instability leads to inconsistent optimization objectives, hindering efficient model training.

    Purpose of the Study:

    • To develop a novel denoising training method to accelerate DETR training.
    • To address the slow convergence issue in DETR-like object detection models.
    • To provide a deeper understanding of the convergence challenges in transformer-based detectors.

    Main Methods:

    • Introduced a denoising training strategy that supplements the Hungarian loss.
    • Fed noisy ground truth bounding boxes into the Transformer decoder to train reconstruction of original boxes.
    • This method is designed to be universally applicable to DETR-like architectures with minimal code changes.

    Main Results:

    • The proposed DN-DETR method achieved a +1.9 AP improvement under identical settings.
    • Achieved 46.0 AP and 49.5 AP with ResNet-50 backbone after 12 and 50 epochs, respectively.
    • Demonstrated comparable performance to baseline methods using 50% fewer training epochs.

    Conclusions:

    • Denoising training effectively reduces bipartite graph matching difficulty, leading to faster convergence.
    • The method shows significant improvements in object detection accuracy and training efficiency.
    • Validated the effectiveness of denoising training across various architectures, including CNN-based detectors and segmentation models.