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D²ETR: Decoder-Only DETR with Computationally Efficient Cross-Scale Attention

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arxiv 2203.00860 v1 pith:NXTHJR24 submitted 2022-03-02 cs.CV

D²ETR: Decoder-Only DETR with Computationally Efficient Cross-Scale Attention

classification cs.CV
keywords detrattentioncomputationalcomputationallycross-scaledecoder-onlydetectorefficient
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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DETR is the first fully end-to-end detector that predicts a final set of predictions without post-processing. However, it suffers from problems such as low performance and slow convergence. A series of works aim to tackle these issues in different ways, but the computational cost is yet expensive due to the sophisticated encoder-decoder architecture. To alleviate this issue, we propose a decoder-only detector called D^2ETR. In the absence of encoder, the decoder directly attends to the fine-fused feature maps generated by the Transformer backbone with a novel computationally efficient cross-scale attention module. D^2ETR demonstrates low computational complexity and high detection accuracy in evaluations on the COCO benchmark, outperforming DETR and its variants.

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