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Ruomei Wang

Researcher at Sun Yat-sen University

Publications -  79
Citations -  484

Ruomei Wang is an academic researcher from Sun Yat-sen University. The author has contributed to research in topics: Computer science & Sketch. The author has an hindex of 9, co-authored 68 publications receiving 355 citations. Previous affiliations of Ruomei Wang include Hong Kong Polytechnic University & University of Hong Kong.

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Journal ArticleDOI

P-smart—a virtual system for clothing thermal functional design

TL;DR: A virtual CAD system developed for clothing thermal functional design and simulation that allows designers and engineers in virtual space to design and preview the thermal functional performance of clothing and gives feedback to improve the design iteratively.
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A CAD system for multi-style thermal functional design of clothing

TL;DR: An innovative method consisting of a CAD system, allowing the designer to perform multi-style clothing thermal functional design on a customized virtual human body, is presented in this paper.
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Learning Deep Similarity Models with Focus Ranking for Fabric Image Retrieval

TL;DR: This paper proposes a novel embedding method termed focus ranking that can be easily unified into a CNN for jointly learning image representations and metrics in the context of fine-grained fabric image retrieval and shows the superiority of the proposed model over existing metric embedding models.
Journal ArticleDOI

A multi-disciplinary strategy for computer-aided clothing thermal engineering design

TL;DR: A systematical approach to integrate multi-disciplinary knowledge and transfer it into engineering-oriented design tools is presented, thus the designers and manufacturers can easily carry out 1D, 2D and even 3D clothing thermal engineering designs according to the practical design requirements with a short design cycle and low design cost.
Proceedings ArticleDOI

A Novel System for Visual Navigation of Educational Videos Using Multimodal Cues

TL;DR: A novel visual navigation system for exploring open educational videos that tightly integrates multimodal cues obtained from the visual, audio and textual channels of the video and presents them with a series of interactive visualization components.