Representative-Discriminative Learning for Open-set Land Cover Classification of Satellite Imagery

Land cover classification of satellite imagery is an important step toward analyzing the Earth's surface. Existing models assume a closed-set setting where both the training and testing classes belong to the same label set. However, due to the unique characteristics of satellite imagery with an extremely vast area of versatile cover materials, the training data are bound to be non-representative. In this paper, we study the problem of open-set land cover classification that identifies the samples belonging to unknown classes during testing, while maintaining performance on known classes. Although inherently a classification problem, both representative and discriminative aspects of data need to be exploited in order to better distinguish unknown classes from known. We propose a representative-discriminative open-set recognition (RDOSR) framework, which 1) projects data from the raw image space to the embedding feature space that facilitates differentiating similar classes, and further 2) enhances both the representative and discriminative capacity through transformation to a so-called abundance space. Experiments on multiple satellite benchmarks demonstrate the effectiveness of the proposed method. We also show the generality of the proposed approach by achieving promising results on open-set classification tasks using RGB images.

READ FULL TEXT
research
03/06/2022

Enhanced land cover and land use information generation from satellite imagery and foursquare data

Volunteered Geographic Information (VGI) has been increasingly used in a...
research
12/11/2019

Wide-Area Land Cover Mapping with Sentinel-1 Imagery using Deep Learning Semantic Segmentation Models

Land cover mapping and monitoring are essential for understanding the en...
research
07/22/2019

Satellite-Net: Automatic Extraction of Land Cover Indicators from Satellite Imagery by Deep Learning

In this paper we address the challenge of land cover classification for ...
research
05/02/2021

Attention-augmented Spatio-Temporal Segmentation for Land Cover Mapping

The availability of massive earth observing satellite data provide huge ...
research
06/18/2020

SatImNet: Structured and Harmonised Training Data for Enhanced Satellite Imagery Classification

Automatic supervised classification of satellite images with complex mod...
research
04/24/2022

Satellite Image Time Series Analysis for Big Earth Observation Data

The development of analytical software for big Earth observation data fa...
research
08/21/2020

Coloring panchromatic nighttime satellite images: Elastic maps vs. kernel smoothing and multivariate regression approach

Artificial light-at-night (ALAN), emitted from the ground and visible fr...

Please sign up or login with your details

Forgot password? Click here to reset