Height Prediction and Refinement from Aerial Images with Semantic and Geometric Guidance

11/21/2020
by   Elhousni Mahdi, et al.
0

Deep learning provides a powerful new approach to many computer vision tasks. Height prediction from aerial images is one of those tasks that benefited greatly from the deployment of deep learning which replaced old multi-view geometry techniques. This letter proposes a two-stage approach, where first a multi-task neural network is used to predict the height map resulting from a single RGB aerial input image. We also include a second refinement step, where a denoising autoencoder is used to produce higher quality height maps. Experiments on two publicly available datasets show that our method is capable of producing state-of-the-art results

READ FULL TEXT

page 1

page 4

research
11/18/2019

Multi-Task Learning of Height and Semantics from Aerial Images

Aerial or satellite imagery is a great source for land surface analysis,...
research
03/07/2023

F2BEV: Bird's Eye View Generation from Surround-View Fisheye Camera Images for Automated Driving

Bird's Eye View (BEV) representations are tremendously useful for percep...
research
04/04/2018

A Multi-Stage Multi-Task Neural Network for Aerial Scene Interpretation and Geolocalization

Semantic segmentation and vision-based geolocalization in aerial images ...
research
07/01/2020

Learning Geocentric Object Pose in Oblique Monocular Images

An object's geocentric pose, defined as the height above ground and orie...
research
08/03/2020

AiRound and CV-BrCT: Novel Multi-View Datasets for Scene Classification

It is undeniable that aerial/satellite images can provide useful informa...
research
07/23/2018

Learning 3D Shapes as Multi-Layered Height-maps using 2D Convolutional Networks

We present a novel global representation of 3D shapes, suitable for the ...
research
09/19/2017

Accurate Genomic Prediction Of Human Height

We construct genomic predictors for heritable and extremely complex huma...

Please sign up or login with your details

Forgot password? Click here to reset