Abstract

Abstract. Land cover describes the physical material of the earth’s surface, whereas land use describes the socio-economic function of a piece of land. Land use information is typically collected in geospatial databases. As such databases become outdated quickly, an automatic update process is required. This paper presents a new approach to determine land cover and to classify land use objects based on convolutional neural networks (CNN). The input data are aerial images and derived data such as digital surface models. Firstly, we apply a CNN to determine the land cover for each pixel of the input image. We compare different CNN structures, all of them based on an encoder-decoder structure for obtaining dense class predictions. Secondly, we propose a new CNN-based methodology for the prediction of the land use label of objects from a geospatial database. In this context, we present a strategy for generating image patches of identical size from the input data, which are classified by a CNN. Again, we compare different CNN architectures. Our experiments show that an overall accuracy of up to 85.7 % and 77.4 % can be achieved for land cover and land use, respectively. The classification of land cover has a positive contribution to the classification of the land use classification.

Highlights

  • Classification of land cover is a standard task in remote sensing, in which each image pixel is assigned a class label indicating the physical material of the object surface

  • We propose new methods for the classification of land cover and land use based on high-resolution digital aerial imagery and derived products such as a Digital Surface Model (DSM) and a Digital Terrain Model (DTM)

  • It is to be expected that training from scratch and fine-tuning will arrive at different minima in parameter space, which makes the two classifiers complementary. This is confirmed by the results achieved by a combination of the two classifiers, EN(B0, B1), which results in an improvement of 1.9% in overall accuracy (OA) and 3% in the average F1 score compared to SegNet-B

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Summary

Introduction

Classification of land cover is a standard task in remote sensing, in which each image pixel is assigned a class label indicating the physical material of the object surface (e.g. grass, asphalt). This task is challenging due to the heterogeneous appearance and high intra-class variance of objects, e.g. The information about land use is often stored in geospatial databases, typically acquired and maintained by national mapping agencies. Such databases consist of objects represented by polygons that are assigned class labels indicating the objects’ land use. The primary goal of land use classification is updating the existing database, whereas land cover is an auxiliary product providing an additional (yet important) input for achieving that overall goal (Albert et al, 2017)

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