Abstract
Abstract. Extracting land cover information from satellite imagery is of great importance for the task of automated monitoring in various remote sensing applications. Deep convolutional neural networks make this task more feasible, but they are limited by the small dataset of annotated images. In this paper, we present a fully convolutional networks architecture, FPN-VGG, that combines Feature Pyramid Networks and VGG. In order to accomplish the task of land cover classification, we create a land cover dataset of pixel-wise annotated images, and employ a transfer learning step and the variant dice loss function to promote the performance of FPN-VGG. The results indicate that FPN-VGG shows more competence for land cover classification comparing with other state-of-the-art fully convolutional networks. The transfer learning and dice loss function are beneficial to improve the performance of on the small and unbalanced dataset. Our best model on the dataset gets an overall accuracy of 82.9%, an average F1 score of 66.0% and an average IoU of 52.7%.
Highlights
Many global and regional applications require land cover information about Earth’s surface
In this paper we present a new deep learning modelling framework for land cover classification of high spatial resolution satellite imagery
The framework is named FPNVGG which is based on feature pyramid networks combining with VGG16
Summary
Many global and regional applications require land cover information about Earth’s surface. With the development of remote sensing technology, the spatial resolution of satellite images is higher and higher, which provides more information for land cover classification and brings great challenges (Tong et al, 2018). The prevalent remote sensing classification methods are mainly based on the spectral and spatial features. The features are classified by classifiers such as support vector machine (SVM), and conditional random field (CRF) et al (Melgani, Bruzzone, 2004, Li et al, 2015). These methods is hard to classify the images in complex conditions.
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More From: The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
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