Abstract

Abstract. Hyperspectral data recorded by future earth observation satellites will have up to hundreds of narrow bands that cover a wide range of the electromagnetic spectrum. The spatial resolution (around 30 meters) of such data, however, can impede the integration of the spatial domain for a classification due to spectrally mixed pixels and blurred edges in the data. Hence, the ability of performing a meaningful classification only relying on spectral information is important. In this study, a model for the spectral classification of hyperspectral data is derived by strategically optimizing a convolutional neural network (1D-CNN). The model is pre-trained and optimized on imagery of different nuts, beans, peas and dried fruits recorded with the Cubert ButterflEye X2 sensor. Subsequently, airborne hyperspectral datasets (Greding, Indian Pines and Pavia University) are used to evaluate the CNN's capability of transfer learning. For that, the datasets are classified with the pre-trained weights and, for comparison, with the same model architecture but trained from scratch with random weights. The results show substantial differences in classification accuracies (from 71.8% to 99.8% overall accuracy) throughout the used datasets, mainly caused by variations in the number of training samples, the spectral separability of the classes as well as the existence of mixed pixels for one dataset. For the dataset that is classified least accurately, the greatest improvement with pre-training is achieved (difference of 3.3% in overall accuracy compared to the non-pre-trained model). For the dataset that is classified with the highest accuracy, no significant transfer learning was observed.

Highlights

  • In recent years, hyperspectral imaging has become an important research field (Bioucas-Dias et al, 2013)

  • Hyperspectral data from space usually comes with a spatial resolution of around 30 meters (Guanter et al, 2015), which may lead to mixed pixels and blurred edges in the data

  • We present our research for extracting spectral features from hyperspectral imagery with 1D-Convolutional Neural Networks (CNNs), i.e. a CNN that takes a one-dimensional spectrum as input

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Summary

Introduction

Hyperspectral imaging has become an important research field (Bioucas-Dias et al, 2013). Dozens to hundreds of narrow bands that cover a wide range of the electromagnetic spectrum offer new possibilities in a large field of applications, such as land cover mapping or material identification (Petropoulos et al, 2012; Rast and Painter, 2019). The acquisition of hyperspectral data from space is hampered since no imaging spectrometer exists yet that records publicly available data. Hyperspectral data from space usually comes with a spatial resolution of around 30 meters (Guanter et al, 2015), which may lead to mixed pixels and blurred edges in the data. The ability to perform a meaningful classification purely relying on spectral information becomes important

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