CVAIAug 21, 2025

DesignCLIP: Multimodal Learning with CLIP for Design Patent Understanding

arXiv:2508.15297v11 citationsh-index: 15EMNLP
Originality Incremental advance
AI Analysis

This work addresses the challenge of ambiguous patent evaluation for design patent analysts by improving accuracy in classification and retrieval tasks, though it is incremental as it adapts existing CLIP methods to a specific domain.

The authors tackled the problem of design patent analysis by developing DesignCLIP, a multimodal framework that leverages CLIP for tasks like classification and retrieval, achieving consistent outperformance over baseline and state-of-the-art models in the patent domain.

In the field of design patent analysis, traditional tasks such as patent classification and patent image retrieval heavily depend on the image data. However, patent images -- typically consisting of sketches with abstract and structural elements of an invention -- often fall short in conveying comprehensive visual context and semantic information. This inadequacy can lead to ambiguities in evaluation during prior art searches. Recent advancements in vision-language models, such as CLIP, offer promising opportunities for more reliable and accurate AI-driven patent analysis. In this work, we leverage CLIP models to develop a unified framework DesignCLIP for design patent applications with a large-scale dataset of U.S. design patents. To address the unique characteristics of patent data, DesignCLIP incorporates class-aware classification and contrastive learning, utilizing generated detailed captions for patent images and multi-views image learning. We validate the effectiveness of DesignCLIP across various downstream tasks, including patent classification and patent retrieval. Additionally, we explore multimodal patent retrieval, which provides the potential to enhance creativity and innovation in design by offering more diverse sources of inspiration. Our experiments show that DesignCLIP consistently outperforms baseline and SOTA models in the patent domain on all tasks. Our findings underscore the promise of multimodal approaches in advancing patent analysis. The codebase is available here: https://anonymous.4open.science/r/PATENTCLIP-4661/README.md.

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