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📄 Abstract
Abstract: Real-time object detection has achieved substantial progress through
meticulously designed architectures and optimization strategies. However, the
pursuit of high-speed inference via lightweight network designs often leads to
degraded feature representation, which hinders further performance improvements
and practical on-device deployment. In this paper, we propose a cost-effective
and highly adaptable distillation framework that harnesses the rapidly evolving
capabilities of Vision Foundation Models (VFMs) to enhance lightweight object
detectors. Given the significant architectural and learning objective
disparities between VFMs and resource-constrained detectors, achieving stable
and task-aligned semantic transfer is challenging. To address this, on one
hand, we introduce a Deep Semantic Injector (DSI) module that facilitates the
integration of high-level representations from VFMs into the deep layers of the
detector. On the other hand, we devise a Gradient-guided Adaptive Modulation
(GAM) strategy, which dynamically adjusts the intensity of semantic transfer
based on gradient norm ratios. Without increasing deployment and inference
overhead, our approach painlessly delivers striking and consistent performance
gains across diverse DETR-based models, underscoring its practical utility for
real-time detection. Our new model family, RT-DETRv4, achieves state-of-the-art
results on COCO, attaining AP scores of 49.7/53.5/55.4/57.0 at corresponding
speeds of 273/169/124/78 FPS.
Authors (8)
Zijun Liao
Yian Zhao
Xin Shan
Yu Yan
Chang Liu
Lei Lu
+2 more
Submitted
October 29, 2025
Key Contributions
This paper proposes a cost-effective knowledge distillation framework to enhance lightweight real-time object detectors by leveraging Vision Foundation Models (VFMs). It introduces a Deep Semantic Injector (DSI) and gradient-guided adaptation to facilitate stable and task-aligned semantic transfer.
Business Value
Enables the development of more efficient and accurate real-time object detection systems for edge devices, crucial for applications like autonomous vehicles and robotics.