Neural volumetric representations have shown the potential that Multi-layer Perceptrons (MLPs) can be optimized with multi-view calibrated images to represent scene geometry and appearance, without explicit 3D supervision. Object segmentation can enrich many downstream applications based on the learned radiance field. However, introducing hand-crafted segmentation to define regions of interest in a complex real-world scene is non-trivial and expensive as it acquires per view annotation. This paper carries out the exploration of self-supervised learning for object segmentation using NeRF for complex real-world scenes. Our framework, called NeRF with Self-supervised Object Segmentation NeRF-SOS, couples object segmentation and neural radiance field to segment objects in any view within a scene. By proposing a novel collaborative contrastive loss in both appearance and geometry levels, NeRF-SOS encourages NeRF models to distill compact geometry-aware segmentation clusters from their density fields and the self-supervised pre-trained 2D visual features. The self-supervised object segmentation framework can be applied to various NeRF models that both lead to photo-realistic rendering results and convincing segmentation maps for both indoor and outdoor scenarios. Extensive results on the LLFF, Tank & Temple, and BlendedMVS datasets validate the effectiveness of NeRF-SOS. It consistently surpasses other 2D-based self-supervised baselines and predicts finer semantics masks than existing supervised counterparts. Please refer to the video on our project page for more details:https://zhiwenfan.github.io/NeRF-SOS.
翻译:神经体积表示显示,多层天体(MLPs)有可能以多视图校准图像优化多层天体分解(MLPs),以显示场景几何和外观,而没有明确的 3D 监督。 目标分解可以丰富基于所学光亮场的许多下游应用。 但是,采用人工雕刻的分解来界定复杂真实世界场景中感兴趣的区域是非三角的和昂贵的,因为它获取了每个视图的注释。 本文探索了利用NeRF为复杂的真实世界场景使用自我监督的物体分解(MLPs)进行物体分解的自我监督学习。 我们的框架, 将自监督的天体分解(NERF) 和神经光亮度(NERF) 字段框架(NERF-S) 的自我监督内部分解(NERF) 和内地(S- real- real- real-ral-ral-ral-ral-ral-lal-lal-lal-lal-lal ) 样图中,可以将各种内部的图像结果应用。 NER- real- sal-ral-ral-ral-s-s-s-s-ral-ral-s-s-l-s-s-s-l-l-l-l-l-l-l-sal-sal-l-l-l-l-s-sal-s-s-s-s-s-sal-sal-s-lis-s-s-l-l-l-l-l-l-l-l-l-l-l-l-s-s-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-lal-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-l-