2018
DOI: 10.5194/isprs-archives-xlii-3-257-2018
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Quality Evaluation of Land-Cover Classification Using Convolutional Neural Network

Abstract: ABSTRACT:Land-cover classification is one of the most important products of earth observation, which focuses mainly on profiling the physical characters of the land surface with temporal and distribution attributes and contains the information of both natural and man-made coverage elements, such as vegetation, soil, glaciers, rivers, lakes, marsh wetlands and various man-made structures. In recent years, the amount of high-resolution remote sensing data has increased sharply. Accordingly, the volume of land-co… Show more

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“…The difference between the Bi-LSTM and the LSTM is that the Bi-LSTM adds a layer of a neural network with reverse input data to extract more time information [74]. The CNN is a common convolutional neural network that is good at dealing with images, especially large image-related machine learning problems, and is often used in the spatial and spectral fields [75]. The way CNN works is to extract 2D spatial features.…”
Section: Model Accuracy and Importance Evaluation Of Quantitative Remmentioning
confidence: 99%
“…The difference between the Bi-LSTM and the LSTM is that the Bi-LSTM adds a layer of a neural network with reverse input data to extract more time information [74]. The CNN is a common convolutional neural network that is good at dealing with images, especially large image-related machine learning problems, and is often used in the spatial and spectral fields [75]. The way CNN works is to extract 2D spatial features.…”
Section: Model Accuracy and Importance Evaluation Of Quantitative Remmentioning
confidence: 99%