Abstract

When extracting land-use information from remote sensing imagery using image segmentation, obtaining fine edges for extracted objects is a key problem that is yet to be solved. In this study, we developed a new weight feature value convolutional neural network (WFCNN) to perform fine remote sensing image segmentation and extract improved land-use information from remote sensing imagery. The WFCNN includes one encoder and one classifier. The encoder obtains a set of spectral features and five levels of semantic features. It uses the linear fusion method to hierarchically fuse the semantic features, employs an adjustment layer to optimize every level of fused features to ensure the stability of the pixel features, and combines the fused semantic and spectral features to form a feature graph. The classifier then uses a Softmax model to perform pixel-by-pixel classification. The WFCNN was trained using a stochastic gradient descent algorithm; the former and two variants were subject to experimental testing based on Gaofen 6 images and aerial images that compared them with the commonly used SegNet, U-NET, and RefineNet models. The accuracy, precision, recall, and F1-Score of the WFCNN were higher than those of the other models, indicating certain advantages in pixel-by-pixel segmentation. The results clearly show that the WFCNN can improve the accuracy and automation level of large-scale land-use mapping and the extraction of other information using remote sensing imagery.

Highlights

  • Remote sensing images have become the main data source for obtaining land-use information at broad spatial scales

  • The most common method first assigns each pixel to a category using image segmentation and subsequently generates land-use information according to the pixel-by-pixel classification result [1,2]

  • Remote sensing image classification mainly relies on three feature types: spectral features mainly express information for individual pixels, textural features mainly express the spatial correlation between adjacent pixels, and semantic features mainly express the relationship between pixels in a specific region in a more abstract way

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Summary

Introduction

Remote sensing images have become the main data source for obtaining land-use information at broad spatial scales. Taking account of the advantage of the short time period of low- and medium-spatial-resolution remote sensing images, some researchers have applied spectral indexes to time-series images [17,18]. Such indexes are mainly used to express common information within the same land-use type through simple band calculations. When these are applied to remote sensing images with rich detail and high spatial resolution, it becomes difficult to extract features with good discrimination, limiting the application of spectral indexes to the classification of such images

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