CVAINov 16, 2025

Temporal Object-Aware Vision Transformer for Few-Shot Video Object Detection

arXiv:2511.13784v1Has Code
Originality Incremental advance
AI Analysis

This work addresses the problem of detecting novel objects in videos with limited labeled data for computer vision applications, representing an incremental advance in few-shot learning methods.

The paper tackles few-shot video object detection by proposing a novel object-aware temporal modeling approach that selectively propagates high-confidence object features across frames, achieving AP improvements of up to 5.3% on benchmark datasets in 5-shot settings.

Few-shot Video Object Detection (FSVOD) addresses the challenge of detecting novel objects in videos with limited labeled examples, overcoming the constraints of traditional detection methods that require extensive training data. This task presents key challenges, including maintaining temporal consistency across frames affected by occlusion and appearance variations, and achieving novel object generalization without relying on complex region proposals, which are often computationally expensive and require task-specific training. Our novel object-aware temporal modeling approach addresses these challenges by incorporating a filtering mechanism that selectively propagates high-confidence object features across frames. This enables efficient feature progression, reduces noise accumulation, and enhances detection accuracy in a few-shot setting. By utilizing few-shot trained detection and classification heads with focused feature propagation, we achieve robust temporal consistency without depending on explicit object tube proposals. Our approach achieves performance gains, with AP improvements of 3.7% (FSVOD-500), 5.3% (FSYTV-40), 4.3% (VidOR), and 4.5 (VidVRD) in the 5-shot setting. Further results demonstrate improvements in 1-shot, 3-shot, and 10-shot configurations. We make the code public at: https://github.com/yogesh-iitj/fs-video-vit

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