ViTOC: Vision Transformer and Object-aware Captioner
This paper presents ViTOC (Vision Transformer and Object-aware Captioner), a novel vision-language model for image captioning that addresses the challenges of accuracy and diversity in generated descriptions. Unlike conventional approaches, ViTOC employs a dual-path architecture based on Vision Tran...
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Zusammenfassung: | This paper presents ViTOC (Vision Transformer and Object-aware Captioner), a
novel vision-language model for image captioning that addresses the challenges
of accuracy and diversity in generated descriptions. Unlike conventional
approaches, ViTOC employs a dual-path architecture based on Vision Transformer
and object detector, effectively fusing global visual features and local object
information through learnable vectors. The model introduces an innovative
object-aware prompting strategy that significantly enhances its capability in
handling long-tail data. Experiments on the standard COCO dataset demonstrate
that ViTOC outperforms baseline models across all evaluation metrics.
Additionally, we propose a reference-free evaluation method based on CLIP to
further validate the model's effectiveness. By utilizing pretrained visual
model parameters, ViTOC achieves efficient end-to-end training. |
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DOI: | 10.48550/arxiv.2411.07265 |