CVFeb 15, 2025

CLoCKDistill: Consistent Location-and-Context-aware Knowledge Distillation for DETRs

arXiv:2502.10683v15 citationsh-index: 7
Originality Incremental advance
AI Analysis

This work addresses the problem of compressing DETR models for applications like self-driving cars, but it is incremental as it builds on existing knowledge distillation techniques with specific adaptations for transformers.

The paper tackles the computational inefficiency of Detection Transformers (DETRs) for deployment in resource-constrained environments by proposing CLoCKDistill, a knowledge distillation method that distills global context and object location details, resulting in performance boosts of 2.2% to 6.4% for student detectors on KITTI and COCO datasets.

Object detection has advanced significantly with Detection Transformers (DETRs). However, these models are computationally demanding, posing challenges for deployment in resource-constrained environments (e.g., self-driving cars). Knowledge distillation (KD) is an effective compression method widely applied to CNN detectors, but its application to DETR models has been limited. Most KD methods for DETRs fail to distill transformer-specific global context. Also, they blindly believe in the teacher model, which can sometimes be misleading. To bridge the gaps, this paper proposes Consistent Location-and-Context-aware Knowledge Distillation (CLoCKDistill) for DETR detectors, which includes both feature distillation and logit distillation components. For feature distillation, instead of distilling backbone features like existing KD methods, we distill the transformer encoder output (i.e., memory) that contains valuable global context and long-range dependencies. Also, we enrich this memory with object location details during feature distillation so that the student model can prioritize relevant regions while effectively capturing the global context. To facilitate logit distillation, we create target-aware queries based on the ground truth, allowing both the student and teacher decoders to attend to consistent and accurate parts of encoder memory. Experiments on the KITTI and COCO datasets show our CLoCKDistill method's efficacy across various DETRs, e.g., single-scale DAB-DETR, multi-scale deformable DETR, and denoising-based DINO. Our method boosts student detector performance by 2.2% to 6.4%.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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