Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Mending Neural Implicit Modeling for 3D Vehicle Reconstruction in the Wild

About

Reconstructing high-quality 3D objects from sparse, partial observations from a single view is of crucial importance for various applications in computer vision, robotics, and graphics. While recent neural implicit modeling methods show promising results on synthetic or dense data, they perform poorly on sparse and noisy real-world data. We discover that the limitations of a popular neural implicit model are due to lack of robust shape priors and lack of proper regularization. In this work, we demonstrate highquality in-the-wild shape reconstruction using: (i) a deep encoder as a robust-initializer of the shape latent-code; (ii) regularized test-time optimization of the latent-code; (iii) a deep discriminator as a learned high-dimensional shape prior; (iv) a novel curriculum learning strategy that allows the model to learn shape priors on synthetic data and smoothly transfer them to sparse real world data. Our approach better captures the global structure, performs well on occluded and sparse observations, and registers well with the ground-truth shape. We demonstrate superior performance over state-of-the-art 3D object reconstruction methods on two real-world datasets.

Shivam Duggal, Zihao Wang, Wei-Chiu Ma, Sivabalan Manivasagam, Justin Liang, Shenlong Wang, Raquel Urtasun• 2021

Related benchmarks

TaskDatasetResultRank
Temporal Instance Matching (Point-to-Point)3RScan v1 (test)
Recall@25%80.68
5
Instance ReconstructionFlyingShape
L1-Chamfer25.27
5
Instance Reconstruction3RScan
L1-Chamfer Distance17.73
5
Instance Matching3RScan 65
Instance Recall (Static)60.32
4
Instance MatchingFlyingShape
Recall0.8369
4
Showing 5 of 5 rows

Other info

Follow for update