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Hauptverfasser: Amemiya, Kanon, Yashima, Daichi, Katsumata, Kei, Komatsu, Takumi, Korekata, Ryosuke, Otsuki, Seitaro, Sugiura, Komei
Format: Preprint
Veröffentlicht: 2026
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Online-Zugang:https://arxiv.org/abs/2603.05446
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author Amemiya, Kanon
Yashima, Daichi
Katsumata, Kei
Komatsu, Takumi
Korekata, Ryosuke
Otsuki, Seitaro
Sugiura, Komei
author_facet Amemiya, Kanon
Yashima, Daichi
Katsumata, Kei
Komatsu, Takumi
Korekata, Ryosuke
Otsuki, Seitaro
Sugiura, Komei
contents We focus on the task of retrieving nail design images based on dense intent descriptions, which represent multi-layered user intent for nail designs. This is challenging because such descriptions specify unconstrained painted elements and pre-manufactured embellishments as well as visual characteristics, themes, and overall impressions. In addition to these descriptions, we assume that users provide palette queries by specifying zero or more colors via a color picker, enabling the expression of subtle and continuous color nuances. Existing vision-language foundation models often struggle to incorporate such descriptions and palettes. To address this, we propose NaiLIA, a multimodal retrieval method for nail design images, which comprehensively aligns with dense intent descriptions and palette queries during retrieval. Our approach introduces a relaxed loss based on confidence scores for unlabeled images that can align with the descriptions. To evaluate NaiLIA, we constructed a benchmark consisting of 10,625 images collected from people with diverse cultural backgrounds. The images were annotated with long and dense intent descriptions given by over 200 annotators. Experimental results demonstrate that NaiLIA outperforms standard methods.
format Preprint
id arxiv_https___arxiv_org_abs_2603_05446
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle NaiLIA: Multimodal Nail Design Retrieval Based on Dense Intent Descriptions and Palette Queries
Amemiya, Kanon
Yashima, Daichi
Katsumata, Kei
Komatsu, Takumi
Korekata, Ryosuke
Otsuki, Seitaro
Sugiura, Komei
Computer Vision and Pattern Recognition
We focus on the task of retrieving nail design images based on dense intent descriptions, which represent multi-layered user intent for nail designs. This is challenging because such descriptions specify unconstrained painted elements and pre-manufactured embellishments as well as visual characteristics, themes, and overall impressions. In addition to these descriptions, we assume that users provide palette queries by specifying zero or more colors via a color picker, enabling the expression of subtle and continuous color nuances. Existing vision-language foundation models often struggle to incorporate such descriptions and palettes. To address this, we propose NaiLIA, a multimodal retrieval method for nail design images, which comprehensively aligns with dense intent descriptions and palette queries during retrieval. Our approach introduces a relaxed loss based on confidence scores for unlabeled images that can align with the descriptions. To evaluate NaiLIA, we constructed a benchmark consisting of 10,625 images collected from people with diverse cultural backgrounds. The images were annotated with long and dense intent descriptions given by over 200 annotators. Experimental results demonstrate that NaiLIA outperforms standard methods.
title NaiLIA: Multimodal Nail Design Retrieval Based on Dense Intent Descriptions and Palette Queries
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2603.05446