Christian Dior Invisible Uv Fluid With Sunscreen Broad Spectrum Spf 50 Emulsion
Product Images NDC 61957-3600

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Product Visual Gallery

This gallery contains 2 technical images submitted to the FDA as part of the official labeling for Christian Dior Invisible Uv Fluid With Sunscreen Broad Spectrum Spf 50 (NDC 61957-3600). Unlike standard consumer photos, these assets often include clinical data figures, molecular chemical structures, and official manufacturer packaging layouts.

As provided by Parfums Christian Dior, these visuals offer a comprehensive scientific overview of the product's physical and chemical identity, aiding pharmacists and researchers in product verification and study.

Product Images & Figures Index

FDA Label Image

Label (Label)

Label (Label)
The Dior Invisible UV Fluid is the next generation of suncare providing powerful broad-spectrum SPF 50 protection against UVB and UVA rays. This hydrating fluid, infused with hyaluronic acid and vitamin E, gives an imperceptible finish without stickiness or white streaks. It is suitable for all skin tones, even on dark skin, and can be used as a makeup base. The product should be applied liberally 15 minutes before sun exposure and reapplied every 2 hours during sun exposure. Additionally, it is advised to take sun protection measures and keep out of reach of children. Please scan the QR code or visit the Dior website for more information.*
FDA Label Image

Tube (Tube)

Tube (Tube)
This is an invisible UV protection fluid with broad-spectrum SPF 50 designed for the face. It is hydrating and provides a non-greasy finish. Key active ingredients include Avobenzone (3%), Homosalate (15%), Octisalate (5%), and Octocrylene (10%). It is important to apply the product 15 minutes before sun exposure and avoid contact with eyes. The product is made in France by Christian Dior and there are directions for use and warnings provided on the packaging.*

* These product label images have been analyzed using experimental machine learning. Please verify findings with the primary label text.