Learned Enrichment of Top-View Grid Maps Improves Object Detection

03/02/2020
by   Sascha Wirges, et al.
0

We propose an object detector for top-view grid maps which is additionally trained to generate an enriched version of its input. Our goal in the joint model is to improve generalization by regularizing towards structural knowledge in form of a map fused from multiple adjacent range sensor measurements. This training data can be generated in an automatic fashion, thus does not require manual annotations. We present an evidential framework to generate training data, investigate different model architectures and show that predicting enriched inputs as an additional task can improve object detection performance.

READ FULL TEXT

page 1

page 4

page 5

research
02/03/2020

Single-Stage Object Detection from Top-View Grid Maps on Custom Sensor Setups

We present our approach to unsupervised domain adaptation for single-sta...
research
01/30/2018

Object Detection on Dynamic Occupancy Grid Maps Using Deep Learning and Automatic Label Generation

We tackle the problem of object detection and pose estimation in a share...
research
05/02/2018

Object Detection and Classification in Occupancy Grid Maps using Deep Convolutional Networks

A detailed environment perception is a crucial component of automated ve...
research
03/15/2018

Object Detection in Video with Spatiotemporal Sampling Networks

We propose a Spatiotemporal Sampling Network (STSN) that uses deformable...
research
01/31/2019

Capturing Object Detection Uncertainty in Multi-Layer Grid Maps

We propose a deep convolutional object detector for automated driving ap...
research
12/19/2013

Delegating Custom Object Detection Tasks to a Universal Classification System

In this paper, a concept of multipurpose object detection system, recent...
research
09/10/2017

Fully Convolutional Neural Networks for Dynamic Object Detection in Grid Maps (Masters Thesis)

One of the most important parts of environment perception is the detecti...

Please sign up or login with your details

Forgot password? Click here to reset