پرو مجازی از طریق نگاشت سهبعدی همراه با بخشبندی مدل سهبعدی
الموضوعات :حامد فتحی 1 , علیرضا احمدی فرد 2 , حسین خسروی 3
1 - دانشکده مهندسی برق- دانشگاه صنعتی شاهرود، شاهرود، ایران
2 - دانشکده مهندسی برق- دانشگاه صنعتی شاهرود، شاهرود، ایران
3 - دانشکده مهندسی برق- دانشگاه صنعتی شاهرود، شاهرود، ایران
الکلمات المفتاحية: پرو مجازی, نگاشت سهبعدی, لاپلاس بلترامی, توصیفگر انحنا,
ملخص المقالة :
پرو مجازی یک گزینه مناسب برای صنعت پوشاک آنلاین است. در این مقاله روشی برای ترسیم مدل سهبعدی لباس انتخابی بر روی مدل سهبعدی مشتری پیشنهاد میگردد. برای وصول به این هدف ابر نقاط مشتری و مانکن توسط دوربین کینکت ثبت میشود. برای سهولت تطابق، این مدلها با استفاده از توصیف گرهای رویه، به بخشهای متناظر تقسیم میشوند. سپس بخشهای متناظر از مانکن به مشتری بهطور جداگانه نگاشت داده می شود. درنهایت، اطلاعات رنگ از ابر نقاط لباس به روی ابر نقاط مشتری انتقال مییابد. روش پیشنهادی دو مزیت اصلی نسبت به روشهای موجود دارد. اول اینکه برای طراحی مدلهای سهبعدی در نرمافزارهای گرافیکی نیازی به متخصص نیست. دوم اینکه هر بافت لباسی میتواند توسط مشتری انتخاب شود. نتایج آزمایشها نشاندهنده توانایی روش پیشنهادی این مقاله در مقایسه با روشهای موجود است.
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