Neural-Sim: Learning to Generate Training Data with NeRF
- URL: http://arxiv.org/abs/2207.11368v1
- Date: Fri, 22 Jul 2022 22:48:33 GMT
- Title: Neural-Sim: Learning to Generate Training Data with NeRF
- Authors: Yunhao Ge, Harkirat Behl, Jiashu Xu, Suriya Gunasekar, Neel Joshi,
Yale Song, Xin Wang, Laurent Itti, Vibhav Vineet
- Abstract summary: We present the first fully differentiable synthetic data pipeline that uses Neural Radiance Fields (NeRFs) in a closed-loop with a target application's loss function.
Our approach generates data on-demand, with no human labor, to maximize accuracy for a target task.
- Score: 31.81496344354997
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Training computer vision models usually requires collecting and labeling vast
amounts of imagery under a diverse set of scene configurations and properties.
This process is incredibly time-consuming, and it is challenging to ensure that
the captured data distribution maps well to the target domain of an application
scenario. Recently, synthetic data has emerged as a way to address both of
these issues. However, existing approaches either require human experts to
manually tune each scene property or use automatic methods that provide little
to no control; this requires rendering large amounts of random data variations,
which is slow and is often suboptimal for the target domain. We present the
first fully differentiable synthetic data pipeline that uses Neural Radiance
Fields (NeRFs) in a closed-loop with a target application's loss function. Our
approach generates data on-demand, with no human labor, to maximize accuracy
for a target task. We illustrate the effectiveness of our method on synthetic
and real-world object detection tasks. We also introduce a new
"YCB-in-the-Wild" dataset and benchmark that provides a test scenario for
object detection with varied poses in real-world environments.
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