Ayesha Saeed, Anam Zahoor, Ali Husnain, Rashid Mehmood Gondal
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引用次数: 0
摘要
本研究旨在通过整合增强现实(AR)、动态定价工具和人工智能驱动的三维建模,提升电子商务家具门户网站的客户体验。利用机器学习算法,特别是 SIFT 和 FLAAN,我们开发出了高精度的家具 3D 模型。该门户网站具有各种筛选功能,包括价格范围和类别,以简化购物体验。人工智能定价工具通过使用 BeautifulSoup 在亚马逊等平台上的网络搜刮技术实现,确保卖家可以制定有竞争力的准确价格,从而提高客户价值。该平台允许卖家要求为其产品添加 3D 模型。然后,管理员会从 Shapenet 数据集中选择最相似的 3D .obj 模型,并将 AR 链接嵌入门户网站,使买家能够通过增强现实技术在自己的空间中直观地看到家具。这种功能可以让客户在购买前看到家具如何与自己的家居环境相匹配,从而大大改善购物体验。该门户网站的后台使用 Django,数据库管理使用 PostgreSQL,确保了快速、安全和可靠的用户体验。通过将 AR、先进的 3D 建模、人工智能驱动的定价和强大的后台技术相结合,这项研究有助于为家具零售业开发一个无缝且引人入胜的电子商务平台。
Enhancing E-commerce furniture shopping with AR and AI-driven 3D modeling
This research aims to enhance the customer experience in e-commerce furniture portals through the integration of augmented reality (AR), a dynamic pricing tool, and AI-driven 3D modeling. Utilizing machine learning algorithms, specifically SIFT and FLAAN, we develop highly accurate 3D models of furniture. The portal features various filters, including price range and categories, to streamline the shopping experience. The AI-enabled pricing tool, implemented through web scraping techniques on platforms like Amazon using BeautifulSoup, ensures sellers can set competitive and accursate prices, enhancing customer value. The platform allows sellers to request the addition of 3D models for their products. Admins then select the most similar 3D .obj models from the Shapenet dataset and embed AR links into the portal, enabling buyers to visualize furniture in their own space through augmented reality. This capability significantly improves the shopping experience by allowing customers to see how furniture fits in their home environment before purchase. The portal is built using Django for the backend and PostgreSQL for database management, ensuring a fast, secure, and reliable user experience. By combining AR, advanced 3D modeling, AI-driven pricing, and robust backend technologies, this research contributes to the development of a seamless and engaging e-commerce platform for furniture retail.