BEGIN:VCALENDAR VERSION:2.0 PRODID:Linklings LLC BEGIN:VTIMEZONE TZID:Australia/Melbourne X-LIC-LOCATION:Australia/Melbourne BEGIN:DAYLIGHT TZOFFSETFROM:+1000 TZOFFSETTO:+1100 TZNAME:AEDT DTSTART:19721003T020000 RRULE:FREQ=YEARLY;BYMONTH=4;BYDAY=1SU END:DAYLIGHT BEGIN:STANDARD DTSTART:19721003T020000 TZOFFSETFROM:+1100 TZOFFSETTO:+1000 TZNAME:AEST RRULE:FREQ=YEARLY;BYMONTH=10;BYDAY=1SU END:STANDARD END:VTIMEZONE BEGIN:VEVENT DTSTAMP:20260114T163632Z LOCATION:Darling Harbour Theatre\, Level 2 (Convention Centre) DTSTART;TZID=Australia/Melbourne:20231212T093000 DTEND;TZID=Australia/Melbourne:20231212T124500 UID:siggraphasia_SIGGRAPH Asia 2023_sess209_papers_1043@linklings.com SUMMARY:ActRay: Online Active Ray Sampling for Radiance Fields DESCRIPTION:Jiangkai Wu, Liming Liu, Yunpeng Tan, Quanlu Jia, Haodan Zhang , and Xinggong Zhang (Peking University)\n\nThanks to the high-quality rec onstruction and photorealistic rendering, the Neural Radiance Field (NeRF) has garnered extensive attention and has been continuously improved. Desp ite its high visual quality, the prohibitive training time limits its prac tical application. Although significant acceleration has been achieved, it is still far from real-time training, due to the need for tens of thousan ds of iterations. In this paper, a feasible solution is to reduce the numb er of required iterations by always training the rays with the highest los s values, instead of the traditional method of training each ray with a un iform probability. To this end, we propose an online active ray sampling s trategy, ActRay. Specifically, to avoid the substantial overhead of calcul ating the actual loss values for all rays in each iteration, a rendering-g radient-based loss propagation algorithm is presented to efficiently estim ate the loss values. To further narrow the gap between the estimated loss and the actual loss, an online learning algorithm based on the Upper Confi dence Bound (UCB) is proposed to control the sampling probability of the r ays, thereby compensating for the bias in loss estimation. We evaluate Act Ray on both real-world and synthetic scenes, and the promising results sho w that it accelerates radiance field training to 6.5x. Besides, we test Ac tRay under all kinds of representations of radiance fields (implicit, expl icit, and hybrid), demonstrating that it is general and effective to diffe rent representations. We believe this work will contribute to the practica l application of radiance fields, because it has taken a step closer to re al-time radiance field training.\n\nRegistration Category: Full Access, En hanced Access, Trade Exhibitor, Experience Hall Exhibitor\n\n URL:https://asia.siggraph.org/2023/full-program?id=papers_1043&sess=sess20 9 END:VEVENT END:VCALENDAR