Neural representations have shown great promise in their ability to represent radiance and light fields while being very compact compared to the image set representation. However, current representations are not well suited for streaming as decoding can only be done at a single level of detail and requires downloading the entire neural network model. Furthermore, high-resolution light field networks can exhibit flickering and aliasing as neural networks are sampled without appropriate filtering. To resolve these issues, we present a progressive multi-scale light field network that encodes a light field with multiple levels of detail. Lower levels of detail are encoded using fewer neural network weights enabling progressive streaming and reducing rendering time. Our progressive multi-scale light field network addresses aliasing by encoding smaller anti-aliased representations at its lower levels of detail. Additionally, per-pixel level of detail enables our representation to support dithered transitions and foveated rendering.
翻译:神经显示显示显示光和光场的能力大有希望,但与图像集的表示方式相比,它非常紧凑,但目前的表示方式并不适合于流出,因为解码只能以单一的细节进行,需要下载整个神经网络模型;此外,高分辨率的光场网络可以显示闪烁和别名,因为神经网络抽样时没有适当的过滤方式。为了解决这些问题,我们提出了一个渐进式的多尺度光场网络,以多种详细程度将光场编码成一个光场。使用较少的神经网络重量进行编码,从而能够逐步流出并缩短交替时间。我们渐进式的多尺度光场网络通过在较低的细节层次对较小的反丑化的表示方式进行编码处理别名。此外,每平方层的详细程度使我们能够支持交错的过渡和培养。