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Zero-shot Generalizable Incremental Learning for Vision-Language Object Detection

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This paper presents Incremental Vision-Language Object Detection (IVLOD), a novel learning task designed to incrementally adapt pre-trained Vision-Language Object Detection Models (VLODMs) to various specialized domains, while simultaneously preserving their zero-shot generalization capabilities for the generalized domain. To address this new challenge, we present the Zero-interference Reparameterizable Adaptation (ZiRa), a novel method that introduces Zero-interference Loss and reparameterization techniques to tackle IVLOD without incurring additional inference costs or a significant increase in memory usage. Comprehensive experiments on COCO and ODinW-13 datasets demonstrate that ZiRa effectively safeguards the zero-shot generalization ability of VLODMs while continuously adapting to new tasks. Specifically, after training on ODinW-13 datasets, ZiRa exhibits superior performance compared to CL-DETR and iDETR, boosting zero-shot generalizability by substantial 13.91 and 8.74 AP, respectively.Our code is available at https://github.com/JarintotionDin/ZiRaGroundingDINO.

Jieren Deng, Haojian Zhang, Kun Ding, Jianhua Hu, Xingxuan Zhang, Yunkuan Wang• 2024

Related benchmarks

TaskDatasetResultRank
Object DetectionMS-COCO
AP5060.7
208
Object DetectionOV-COCO + DIOR
mAP44.4
12
Object DetectionOV-COCO + ArTaxOr
mAP46.9
12
Object DetectionOV-COCO + UODD
mAP46
12
Object DetectionUODD
mAPtgt46.8
12
Object DetectionDIOR
mAPtgt59.8
12
Object DetectionNovel-114 Average
AP50:9532.3
11
Object DetectionNovel-114 Animals-25
AP50:9587.7
8
Object DetectionNovel-114 Food-28
AP73.2
3
Object DetectionNovel-114 Clothing-6
AP46.4
3
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