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    Digital fashion innovations: advances in design, simulation, and industry

    Muhammad Sayem, Abu Sadat ORCID logoORCID: https://orcid.org/0000-0003-3034-7892 (2023) Digital fashion innovations: advances in design, simulation, and industry. Textile Institute Professional Publications . CRC Press, Boca Raton. ISBN 9781032207278 (paperback); 9781032207292 (hardback); 9781003264958 (ebook)

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    Abstract

    Digitalisation is becoming a standard practice in the fashion industry. Innovation in digital fashion is not just limited to computer-aided design (CAD) and manufacturing (CAM), rather runs throughout the fashion supply chain, from product life cycle management and developing new business models that promote sustainability to connecting virtual and augmenting reality (VR/AR) with fashion for enhanced consumers experience through smart solutions. Digital Fashion Innovations: Advances in Design, Simulation, and Industry captures the state-of-art developments taking place in this multi-disciplinary field. Discusses digital fashion design and e-prototyping, including 2D/3D CAD, digital pattern cutting, virtual drape simulation and fit analysis. Covers digital human modelling and VR/AR technology. Details digital fashion business and promotion, including application of e-tools for supply chain, e-commerce, block chain technologies, big data, and artificial intelligence (AI). This interdisciplinary book will appeal to professionals working in textile and fashion technology, those developing AR and AI for clothing end uses, and anyone interested in the business of digital fashion and textile design. It will also be of interest to scientists and engineers working in anthropometry for a variety of disciplines, such as medical devices and ergonomics.

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