Outfit Aura was a participant of the Peerlist December Hackathon.
Outfit Aura addresses the complexities of online fashion shopping by making it easier for users to find outfits that align with their unique preferences, cultural backgrounds, and current trends. Traditional online shopping can feel impersonal and overwhelming, with users often unsure of how clothes will look on them or whether an outfit will suit their style. Outfit Aura solves this by delivering a tailored, interactive, and visually immersive shopping experience, giving users confidence in their purchases.
Personalized Outfit Discovery: Users receive outfit recommendations based on personal style, cultural influences, and current trends, simplifying the selection process.
Enhanced Shopping Experience with AI Interaction: An interactive Multilingual Conversational Fashion Outfit Generator provides real-time feedback and customization, making style exploration fun and engaging.
Confidence through Virtual Try-On: The Virtual Try-On feature allows users to see how outfits look on them before buying, reducing uncertainty and return rates.
Always Up-to-Date: Our project adapts to trends from social media and seasonal events, ensuring users stay fashion-forward and relevant.
Streamlined Shopping with Amazon Integration: Recommended outfits are linked directly to Amazon, enabling easy and convenient purchases within the app.
Culturally Resonant Recommendations: By reflecting cultural styles and festive highlights, our project creates a more personalized shopping experience that resonates with diverse backgrounds.
Note: This project could not be deployed at this time due to the limitations of hosting our ResNet deep learning model, which relies on a dataset of 44,000 images to search for relevant products locally. Unfortunately, uploading and maintaining such a large dataset on any server proved to be a significant challenge, preventing us from deploying the model for live usage.
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