English

LaTeRF: Label and Text Driven Object Radiance Fields

Computer Vision and Pattern Recognition 2022-09-05 v3

Abstract

Obtaining 3D object representations is important for creating photo-realistic simulations and for collecting AR and VR assets. Neural fields have shown their effectiveness in learning a continuous volumetric representation of a scene from 2D images, but acquiring object representations from these models with weak supervision remains an open challenge. In this paper we introduce LaTeRF, a method for extracting an object of interest from a scene given 2D images of the entire scene, known camera poses, a natural language description of the object, and a set of point-labels of object and non-object points in the input images. To faithfully extract the object from the scene, LaTeRF extends the NeRF formulation with an additional `objectness' probability at each 3D point. Additionally, we leverage the rich latent space of a pre-trained CLIP model combined with our differentiable object renderer, to inpaint the occluded parts of the object. We demonstrate high-fidelity object extraction on both synthetic and real-world datasets and justify our design choices through an extensive ablation study.

Keywords

Cite

@article{arxiv.2207.01583,
  title  = {LaTeRF: Label and Text Driven Object Radiance Fields},
  author = {Ashkan Mirzaei and Yash Kant and Jonathan Kelly and Igor Gilitschenski},
  journal= {arXiv preprint arXiv:2207.01583},
  year   = {2022}
}
R2 v1 2026-06-24T12:13:37.209Z