Abstract
The accurate land cover change detection is critical to improve the landscape dynamics analysis and mitigate desertification problems efficiently. Desertification detection is a challenging problem because of the high degree of similarity between some desertification cases and like-desertification phenomena, such as deforestation. This article provides an effective approach to detect deserted regions based on Landsat imagery and variational autoencoder (VAE). The VAE model, as a deep learning-based model, has gained special attention in features extraction and modeling due to its distribution-free assumptions and superior nonlinear approximation. Here, a VAE approach is applied to spectral signatures for detecting pixels affected by the land cover change. The considered features are extracted from multitemporal images and include multispectral information, and no prior image segmentation is required. The proposed method was evaluated on the publicly available remote sensing data using multitemporal Landsat optical images taken from the freely available Landsat program. The arid region around Biskra in Algeria is selected as a study area since it is well-known that desertification phenomena strongly influence this region. The VAE model was evaluated and compared with restricted Boltzmann machines, deep learning model, and binary clustering algorithms, including Agglomerative, BIRCH, expected maximization, k-mean clustering algorithms, and one-class support vector machine. The comparative results showed that the VAE consistently outperformed the other models for detecting changes to the land cover, mainly deserted regions. This study also showed that VAE outperformed the state-of-the-art algorithms.
Highlights
T HE need for environmental protection, monitoring, and security is increasing over the last decades [1]
The second main contribution of this article is the introduction of the deep learning variational autoencoder (VAE) model, which is primarily designed as a generative to deal with computer vision applications, for desertification detection based on Landsat imagery
This article introduces a robust approach based on deep learning formalism to desertification detection and discrimination using multitemporal and multispectral remote sensing data
Summary
T HE need for environmental protection, monitoring, and security is increasing over the last decades [1]. It has a vital role in improving the valuation of burned areas, shifting cultivation, monitoring pollution, assessing deforestation, urban growth, and desertification. In [5], a temporal evaluation of the desertification process based on the support vector machine per object classification and the change indices as features for assessing the land cover degradation is proposed. Such is applied to study the desertification phenomenon in Biskra (Algeria) using the optical Landsat image series over a time interval between 1986 and 2011, where an overall accuracy of 95.15% was reached [5].
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More From: IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing
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