Semi-Supervised Domain Generalization for Object Detection via Language-Guided Feature Alignment

BMVC 2023  ยท  Sina Malakouti, Adriana Kovashka ยท

Existing domain adaptation (DA) and generalization (DG) methods in object detection enforce feature alignment in the visual space but face challenges like object appearance variability and scene complexity, which make it difficult to distinguish between objects and achieve accurate detection. In this paper, we are the first to address the problem of semi-supervised domain generalization by exploring vision-language pre-training and enforcing feature alignment through the language space. We employ a novel Cross-Domain Descriptive Multi-Scale Learning (CDDMSL) aiming to maximize the agreement between descriptions of an image presented with different domain-specific characteristics in the embedding space. CDDMSL significantly outperforms existing methods, achieving 11.7% and 7.5% improvement in DG and DA settings, respectively. Comprehensive analysis and ablation studies confirm the effectiveness of our method, positioning CDDMSL as a promising approach for domain generalization in object detection tasks.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Object Detection BDD100K CDDMSL MAP 27.1 # 1
Object Detection Cityscapes to Foggy Cityscapes CDDMSL mAP 54.3 # 1
Object Detection Clipart1k CDDMSL MAP 39.8 # 1
Object Detection Comic2k CDDMSL mAP 45.9 # 1
Object Detection Pascal VOC to Clipart1K CDDMSL mAP 40.4 # 2
Object Detection PASCAL VOC to Comic2k CDDMSL mAP 46.3 # 1
Object Detection PASCAL VOC to Watercolor2k CDDMSL mAp 49.7 # 1
Object Detection Watercolor2k CDDMSL MAP 49.8 # 1

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