Current state-of-the-art approaches in Source-Free Object Detection (SFOD) typically rely on Mean-Teacher self-labeling. However, domain shift often reduces the detector's ability to maintain strong object-focused representations, causing high-confidence activations over background clutter. This weak object focus results in unreliable pseudo-labels from the detection head. While prior works mainly refine these pseudo-labels, they overlook the underlying need to strengthen the feature space itself. We propose FALCON-SFOD (Foundation-Aligned Learning with Clutter suppression and Noise robustness), a framework designed to enhance object-focused adaptation under domain shift. It consists of two complementary components. SPAR (Spatial Prior-Aware Regularization) leverages the generalization strength of vision foundation models to regularize the detector's feature space. Using class-agnostic binary masks derived from OV-SAM, SPAR promotes structured and foreground-focused activations by guiding the network toward object regions. IRPL (Imbalance-aware Noise Robust Pseudo-Labeling) complements SPAR by promoting balanced and noise-tolerant learning under severe foreground-background imbalance. Guided by a theoretical analysis that connects these designs to tighter localization and classification error bounds, FALCON-SFOD achieves competitive performance across SFOD benchmarks.
翻译:当前无源目标检测领域的最先进方法通常依赖于Mean-Teacher自标记框架。然而,域偏移往往会削弱检测器保持强目标聚焦表征的能力,导致在背景杂波上产生高置信度激活。这种薄弱的目标聚焦性会导致检测头产生不可靠的伪标签。现有研究主要侧重于优化这些伪标签,却忽视了强化特征空间本身这一根本需求。我们提出FALCON-SFOD(基于基础模型对齐的杂波抑制与噪声鲁棒学习框架),该框架旨在增强域偏移下的目标聚焦适应能力。它包含两个互补组件:SPAR(空间先验感知正则化)利用视觉基础模型的泛化能力对检测器特征空间进行正则化,通过OV-SAM生成的类别无关二值掩码引导网络关注目标区域,从而促进结构化且聚焦前景的激活;IRPL(不平衡感知的噪声鲁棒伪标签生成)在严重前景-背景不平衡条件下,通过促进均衡且耐噪声的学习机制与SPAR形成互补。理论分析表明这些设计能够获得更紧致的定位与分类误差界,在多个SFOD基准测试中,FALCON-SFOD均取得了具有竞争力的性能表现。