1Department of Electrical and Computer Engineering, Northeastern University, Boston, MA, USA
2Georgia Institute of Technology, USA
3University of California, Santa Cruz, USA
4Information Systems, Northeastern University, Boston, USA
5Georgetown University, USA
*Corresponding Author: he.shuyao@northeastern.edu
Online Published on 16 December, 2024.
Our work presents a neural network designed to convert textual descriptions into 3D models. By leveraging the encoder-decoder architecture, we effectively combine text information with attributes such as shape, color, and position. This combined information is then input into a generator to predict new furniture objects, which are enriched with detailed information like color and shape.[1] The predicted furniture objects are subsequently processed by an encoder to extract feature information, which is then utilized in the loss function to propagate errors and update model weights. After training the network, we can generate new 3D objects solely based on textual input, showcasing the potential of our approach in generating customizable 3D models from descriptive text.[2]
Neural Radiance, 2D, 3D, Texture