Generalizing Single-View 3D Shape Retrieval to Occlusions and Unseen
Objects
- URL: http://arxiv.org/abs/2401.00405v1
- Date: Sun, 31 Dec 2023 05:39:38 GMT
- Title: Generalizing Single-View 3D Shape Retrieval to Occlusions and Unseen
Objects
- Authors: Qirui Wu, Daniel Ritchie, Manolis Savva, Angel X. Chang
- Abstract summary: Single-view 3D shape retrieval is a challenging task that is increasingly important with the growth of available 3D data.
We systematically evaluate single-view 3D shape retrieval along three different axes: the presence of object occlusions and truncations, generalization to unseen 3D shape data, and generalization to unseen objects in the input images.
- Score: 32.32128461720876
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Single-view 3D shape retrieval is a challenging task that is increasingly
important with the growth of available 3D data. Prior work that has studied
this task has not focused on evaluating how realistic occlusions impact
performance, and how shape retrieval methods generalize to scenarios where
either the target 3D shape database contains unseen shapes, or the input image
contains unseen objects. In this paper, we systematically evaluate single-view
3D shape retrieval along three different axes: the presence of object
occlusions and truncations, generalization to unseen 3D shape data, and
generalization to unseen objects in the input images. We standardize two
existing datasets of real images and propose a dataset generation pipeline to
produce a synthetic dataset of scenes with multiple objects exhibiting
realistic occlusions. Our experiments show that training on occlusion-free data
as was commonly done in prior work leads to significant performance degradation
for inputs with occlusion. We find that that by first pretraining on our
synthetic dataset with occlusions and then finetuning on real data, we can
significantly outperform models from prior work and demonstrate robustness to
both unseen 3D shapes and unseen objects.
Related papers
- Enhancing Generalizability of Representation Learning for Data-Efficient 3D Scene Understanding [50.448520056844885]
We propose a generative Bayesian network to produce diverse synthetic scenes with real-world patterns.
A series of experiments robustly display our method's consistent superiority over existing state-of-the-art pre-training approaches.
arXiv Detail & Related papers (2024-06-17T07:43:53Z) - Object-Centric Domain Randomization for 3D Shape Reconstruction in the Wild [22.82439286651921]
One of the biggest challenges in single-view 3D shape reconstruction in the wild is the scarcity of 3D shape, 2D image>-paired data from real-world environments.
Inspired by remarkable achievements via domain randomization, we propose ObjectDR which synthesizes such paired data via a random simulation of visual variations in object appearances and backgrounds.
arXiv Detail & Related papers (2024-03-21T16:40:10Z) - 3D Adversarial Augmentations for Robust Out-of-Domain Predictions [115.74319739738571]
We focus on improving the generalization to out-of-domain data.
We learn a set of vectors that deform the objects in an adversarial fashion.
We perform adversarial augmentation by applying the learned sample-independent vectors to the available objects when training a model.
arXiv Detail & Related papers (2023-08-29T17:58:55Z) - A Fusion of Variational Distribution Priors and Saliency Map Replay for Continual 3D Reconstruction [1.2289361708127877]
Single-image 3D reconstruction is a research challenge focused on predicting 3D object shapes from single-view images.
This task requires significant data acquisition to predict both visible and occluded portions of the shape.
We propose a continual learning-based 3D reconstruction method where our goal is to design a model using Variational Priors that can still reconstruct the previously seen classes reasonably even after training on new classes.
arXiv Detail & Related papers (2023-08-17T06:48:55Z) - 3D Surface Reconstruction in the Wild by Deforming Shape Priors from
Synthetic Data [24.97027425606138]
Reconstructing the underlying 3D surface of an object from a single image is a challenging problem.
We present a new method for joint category-specific 3D reconstruction and object pose estimation from a single image.
Our approach achieves state-of-the-art reconstruction performance across several real-world datasets.
arXiv Detail & Related papers (2023-02-24T20:37:27Z) - RandomRooms: Unsupervised Pre-training from Synthetic Shapes and
Randomized Layouts for 3D Object Detection [138.2892824662943]
A promising solution is to make better use of the synthetic dataset, which consists of CAD object models, to boost the learning on real datasets.
Recent work on 3D pre-training exhibits failure when transfer features learned on synthetic objects to other real-world applications.
In this work, we put forward a new method called RandomRooms to accomplish this objective.
arXiv Detail & Related papers (2021-08-17T17:56:12Z) - Object Wake-up: 3-D Object Reconstruction, Animation, and in-situ
Rendering from a Single Image [58.69732754597448]
Given a picture of a chair, could we extract the 3-D shape of the chair, animate its plausible articulations and motions, and render in-situ in its original image space?
We devise an automated approach to extract and manipulate articulated objects in single images.
arXiv Detail & Related papers (2021-08-05T16:20:12Z) - Secrets of 3D Implicit Object Shape Reconstruction in the Wild [92.5554695397653]
Reconstructing high-fidelity 3D objects from sparse, partial observation is crucial for various applications in computer vision, robotics, and graphics.
Recent neural implicit modeling methods show promising results on synthetic or dense datasets.
But, they perform poorly on real-world data that is sparse and noisy.
This paper analyzes the root cause of such deficient performance of a popular neural implicit model.
arXiv Detail & Related papers (2021-01-18T03:24:48Z) - Shape Prior Deformation for Categorical 6D Object Pose and Size
Estimation [62.618227434286]
We present a novel learning approach to recover the 6D poses and sizes of unseen object instances from an RGB-D image.
We propose a deep network to reconstruct the 3D object model by explicitly modeling the deformation from a pre-learned categorical shape prior.
arXiv Detail & Related papers (2020-07-16T16:45:05Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.