ArXiv TLDR

FASH-iCNN: Making Editorial Fashion Identity Inspectable Through Multimodal CNN Probing

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2604.26186

Morayo Danielle Adeyemi, Ryan A. Rossi, Franck Dernoncourt

cs.CVcs.HCcs.IRcs.MM

TLDR

FASH-iCNN is a multimodal system that inspects editorial fashion identity in runway images, identifying house, era, and color traditions.

Key contributions

  • FASH-iCNN inspects fashion identity from garment images, identifying house, era, and color.
  • Achieves 78.2% top-1 accuracy for fashion house and 88.6% for decade.
  • Shows texture and luminance are key for editorial identity, not color (37.6pp vs 10.6pp drop).
  • Trained on 87,547 Vogue runway images (1991-2024) across 15 fashion houses.

Why it matters

This paper introduces a system that demystifies the aesthetic logic encoded in fashion AI. It allows users to understand which houses, eras, and traditions influence predictions, making AI more transparent.

Original Abstract

Fashion AI systems routinely encode the aesthetic logic of specific houses, editors, and historical moments without disclosing it. We present FASH-iCNN, a multimodal system trained on 87,547 Vogue runway images across 15 fashion houses spanning 1991-2024 that makes this cultural logic inspectable. Given a photograph of a garment, the system recovers which house produced it, which era it belongs to, and which color tradition it reflects. A clothing-only model identifies the fashion house at 78.2% top-1 across 14 houses, the decade at 88.6% top-1, and the specific year at 58.3% top-1 across 34 years with a mean error of just 2.2 years. Probing which visual channels carry this signal reveals a sharp dissociation: removing color costs only 10.6pp of house identity accuracy, while removing texture costs 37.6pp, establishing texture and luminance as the primary carriers of editorial identity. FASH-iCNN treats editorial culture as the signal rather than background noise, identifying which houses, eras, and color traditions shaped each output so that users can see not just what the system predicts but which houses, editors, and historical moments are encoded in that prediction.

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