Bridging Modality Gaps in e-Commerce Products via Vision-Language Alignment
Yipeng Zhang, Hongju Yu, Aritra Mandal, Canran Xu, Qunzhi Zhou, Zhe Wu

TL;DR
This paper introduces OPAL, a multimodal large language model framework that generates accurate, schema-compliant e-commerce product descriptions from images by bridging visual-textual modality gaps and refining data quality.
Contribution
The paper presents OPAL, a novel framework with data refinement techniques and visual instruction tuning to improve product description generation from images in e-commerce.
Findings
OPAL outperforms baseline methods in description quality.
OPAL achieves higher schema completion rates.
OPAL reduces hallucinations and improves robustness.
Abstract
Item information, such as titles and attributes, is essential for effective user engagement in e-commerce. However, manual or semi-manual entry of structured item specifics often produces inconsistent quality, errors, and slow turnaround, especially for Customer-to-Customer sellers. Generating accurate descriptions directly from item images offers a promising alternative. Existing retrieval-based solutions address some of these issues but often miss fine-grained visual details and struggle with niche or specialized categories. We propose Optimized Preference-Based AI for Listings (OPAL), a framework for generating schema-compliant, high-quality item descriptions from images using a fine-tuned multimodal large language model (MLLM). OPAL addresses key challenges in multimodal e-commerce applications, including bridging modality gaps and capturing detailed contextual information. It…
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