Finding Your (3D) Center: 3D Object Detection Using a Learned Loss

04/06/2020
by   David Griffiths, et al.
0

Massive semantic labeling is readily available for 2D images, but much harder to achieve for 3D scenes. Objects in 3D repositories like ShapeNet are labeled, but regrettably only in isolation, so without context. 3D scenes can be acquired by range scanners on city-level scale, but much fewer with semantic labels. Addressing this disparity, we introduce a new optimization procedure, which allows training for 3D detection with raw 3D scans while using as little as 5 optimization uses two networks. A scene network maps an entire 3D scene to a set of 3D object centers. As we assume the scene not to be labeled by centers, no classic loss, such as chamfer can be used to train it. Instead, we use another network to emulate the loss. This loss network is trained on a small labeled subset and maps a non-centered 3D object in the presence of distractions to its own center. This function is very similar - and hence can be used instead of - the gradient the supervised loss would have. Our evaluation documents competitive fidelity at a much lower level of supervision, respectively higher quality at comparable supervision. Supplementary material can be found at: https://dgriffiths3.github.io.

READ FULL TEXT

page 3

page 13

page 19

research
07/23/2020

Weakly Supervised 3D Object Detection from Lidar Point Cloud

It is laborious to manually label point cloud data for training high-qua...
research
05/23/2023

Learning Remote Sensing Object Detection with Single Point Supervision

Pointly Supervised Object Detection (PSOD) has attracted considerable in...
research
08/26/2018

Label and Sample: Efficient Training of Vehicle Object Detector from Sparsely Labeled Data

Self-driving vehicle vision systems must deal with an extremely broad an...
research
08/11/2023

Semantic-embedded Similarity Prototype for Scene Recognition

Due to the high inter-class similarity caused by the complex composition...
research
12/02/2020

Curiosity-driven 3D Scene Structure from Single-image Self-supervision

Previous work has demonstrated learning isolated 3D objects (voxel grids...
research
01/04/2018

Object segmentation in depth maps with one user click and a synthetically trained fully convolutional network

With more and more household objects built on planned obsolescence and c...
research
11/22/2022

UpCycling: Semi-supervised 3D Object Detection without Sharing Raw-level Unlabeled Scenes

Semi-supervised Learning (SSL) has received increasing attention in auto...

Please sign up or login with your details

Forgot password? Click here to reset