Unifying Vision-Language Latents for Zero-label Image Caption Enhancement

Published: 23 Sept 2025, Last Modified: 17 Nov 2025UniReps2025EveryoneRevisionsBibTeXCC BY 4.0
Supplementary Material: pdf
Track: Proceedings Track
Keywords: Representation Learning, Unsupervised Learning, Computer Vision
TL;DR: ViZer enhances VLM image captioning through zero-label learning, serving as a starting point for broader zero-label training in vision-language tasks.
Abstract: Vision-language models (VLMs) achieve remarkable performance through large-scale image–text pretraining. However, their reliance on labeled image datasets limits scalability and leaves vast amounts of unlabeled image data underutilized. To address this, we propose Unified Vision-Language Alignment for Zero-Label Enhancement (ViZer), an enhancement training framework that enables zero-label learning in image captioning, providing a practical starting point for broader zero-label adaptation in vision-language tasks. Unlike prior approaches that rely on human or synthetically annotated datasets, ViZer actively aligns vision and language representation features during training, enabling existing VLMs to generate improved captions without requiring text labels or full retraining. We demonstrate ViZer's advantage in qualitative evaluation, as automated caption metrics such as CIDEr and BERTScore often penalize details that are absent in reference captions. Applying ViZer on SmolVLM-Base and Qwen2-VL, we observe consistent qualitative improvements, producing captions that are more grounded and descriptive than their baseline.
Submission Number: 95
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