CVMar 13, 2023

Lite DETR : An Interleaved Multi-Scale Encoder for Efficient DETR

arXiv:2303.07335v1119 citationsh-index: 80Has Code
Originality Incremental advance
AI Analysis

This work addresses a bottleneck for real-time applications of DETR models in computer vision, offering an incremental improvement in efficiency.

The paper tackles the computational inefficiency of multi-scale feature fusion in DETR-based object detection models, particularly due to excessive low-level feature tokens, and presents Lite DETR, which reduces GFLOPs by 60% while maintaining 99% of original performance.

Recent DEtection TRansformer-based (DETR) models have obtained remarkable performance. Its success cannot be achieved without the re-introduction of multi-scale feature fusion in the encoder. However, the excessively increased tokens in multi-scale features, especially for about 75\% of low-level features, are quite computationally inefficient, which hinders real applications of DETR models. In this paper, we present Lite DETR, a simple yet efficient end-to-end object detection framework that can effectively reduce the GFLOPs of the detection head by 60\% while keeping 99\% of the original performance. Specifically, we design an efficient encoder block to update high-level features (corresponding to small-resolution feature maps) and low-level features (corresponding to large-resolution feature maps) in an interleaved way. In addition, to better fuse cross-scale features, we develop a key-aware deformable attention to predict more reliable attention weights. Comprehensive experiments validate the effectiveness and efficiency of the proposed Lite DETR, and the efficient encoder strategy can generalize well across existing DETR-based models. The code will be available in \url{https://github.com/IDEA-Research/Lite-DETR}.

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