This paper proposes a robust deep learning-based model for accurately classifying human body shapes into five categories - Rectangle, Triangle, Inverted Triangle, Hourglass, and Apple. The model utilizes a segmentation network to extract the person's body from the image, and then employs various pre-trained convolutional neural network architectures to classify the body shape.
Die Arbeit konzentriert sich auf die inverse Modellierung von Kleidungsstücken mit einem differenzierbaren Simulator.
Personalized outfit generation through DiFashion enhances fashion recommendation with high fidelity and compatibility.
HAIFIT introduces a novel approach to transform sketches into high-fidelity clothing images, excelling in preserving intricate details essential for fashion design applications.
AI and fashion design merge with the Fashion-Diffusion dataset, offering over a million high-quality images for Text-to-Image synthesis in fashion design.
AI-driven DiFashion enhances personalized outfit generation and recommendation through innovative generative models.
Introducing HAIFIT, a novel approach transforming sketches into high-fidelity clothing images, excelling in preserving intricate details essential for fashion design applications.
The author's main thesis is to develop a method using a differentiable simulator to recover 2D sewing patterns from 3D garment geometries, enabling faithful replication of garment shapes for virtual try-on and fabrication.
The author proposes an intelligent Fashion Analyzing and Reporting system, GPT-FAR, to automate the Fashion Report Generation task using Large Language Models (LLMs) in the fashion domain.
DiFashion introduces a novel task, Generative Outfit Recommendation (GOR), to synthesize personalized outfits using AI-generated content. The model aims to achieve high fidelity, compatibility, and personalization in outfit generation.