Instant Neural Graphics Primitives with a Multiresolution Hash Encoding_김휘창 발표
페이지 정보
작성자 최고관리자 댓글 조회 작성일 23-02-16 15:52본문
Neural graphics primitives, parameterized by fully connected neural networks, can be costly to train and evaluate. We reduce this cost with a versatile new input encoding that permits the use of a smaller network without sacrificing quality, thus significantly reducing the number of floating point and memory access operations: a small neural network is augmented by a multiresolution hash table of trainable feature vectors whose values are optimized through stochastic gradient descent. The multiresolution structure allows the network to disambiguate hash collisions, making for a simple architecture that is trivial to parallelize on modern GPUs. We leverage this parallelism by implementing the whole system using fully-fused CUDA kernels with a focus on minimizing wasted bandwidth and compute operations. We achieve a combined speedup of several orders of magnitude, enabling training of high-quality neural graphics primitives in a matter of seconds, and rendering in tens of milliseconds at a resolution of 1920×1080.
첨부파일
- 세미나_김휘창_2022.10.18.pptx (75.7M) 1회 다운로드 | DATE : 2023-02-16 15:52:53
댓글목록
등록된 댓글이 없습니다.