CVCLLGSep 29, 2025

Multimodal Arabic Captioning with Interpretable Visual Concept Integration

arXiv:2510.03295v1h-index: 4
Originality Incremental advance
AI Analysis

This work addresses the problem of generating culturally coherent Arabic captions for Arabic-speaking users, presenting an incremental improvement through a hybrid pipeline.

The authors tackled Arabic image captioning by integrating interpretable visual concepts with multimodal generation, achieving best BLEU-1 of 5.34% and cosine similarity of 60.01% using mCLIP + Gemini Pro Vision.

We present VLCAP, an Arabic image captioning framework that integrates CLIP-based visual label retrieval with multimodal text generation. Rather than relying solely on end-to-end captioning, VLCAP grounds generation in interpretable Arabic visual concepts extracted with three multilingual encoders, mCLIP, AraCLIP, and Jina V4, each evaluated separately for label retrieval. A hybrid vocabulary is built from training captions and enriched with about 21K general domain labels translated from the Visual Genome dataset, covering objects, attributes, and scenes. The top-k retrieved labels are transformed into fluent Arabic prompts and passed along with the original image to vision-language models. In the second stage, we tested Qwen-VL and Gemini Pro Vision for caption generation, resulting in six encoder-decoder configurations. The results show that mCLIP + Gemini Pro Vision achieved the best BLEU-1 (5.34%) and cosine similarity (60.01%), while AraCLIP + Qwen-VL obtained the highest LLM-judge score (36.33%). This interpretable pipeline enables culturally coherent and contextually accurate Arabic captions.

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