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Classification for High Resolution Remote Sensing Imagery Using a Fully Convolutional Network
by
Sun, Tao
, Fu, Gang
, Zhang, Qijian
, Liu, Changjun
, Zhou, Rong
in
Aversion learning
/ Classification
/ Coefficients
/ Color
/ Color imagery
/ Computer architecture
/ Conditional random fields
/ Convolution
/ Detection
/ High resolution
/ Image classification
/ Image processing
/ Image resolution
/ Image segmentation
/ Learning
/ Neural networks
/ Object oriented programming
/ Post-production processing
/ Recall
/ Remote sensing
/ Serial learning
/ State of the art
2017
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Classification for High Resolution Remote Sensing Imagery Using a Fully Convolutional Network
by
Sun, Tao
, Fu, Gang
, Zhang, Qijian
, Liu, Changjun
, Zhou, Rong
in
Aversion learning
/ Classification
/ Coefficients
/ Color
/ Color imagery
/ Computer architecture
/ Conditional random fields
/ Convolution
/ Detection
/ High resolution
/ Image classification
/ Image processing
/ Image resolution
/ Image segmentation
/ Learning
/ Neural networks
/ Object oriented programming
/ Post-production processing
/ Recall
/ Remote sensing
/ Serial learning
/ State of the art
2017
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Do you wish to request the book?
Classification for High Resolution Remote Sensing Imagery Using a Fully Convolutional Network
by
Sun, Tao
, Fu, Gang
, Zhang, Qijian
, Liu, Changjun
, Zhou, Rong
in
Aversion learning
/ Classification
/ Coefficients
/ Color
/ Color imagery
/ Computer architecture
/ Conditional random fields
/ Convolution
/ Detection
/ High resolution
/ Image classification
/ Image processing
/ Image resolution
/ Image segmentation
/ Learning
/ Neural networks
/ Object oriented programming
/ Post-production processing
/ Recall
/ Remote sensing
/ Serial learning
/ State of the art
2017
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Classification for High Resolution Remote Sensing Imagery Using a Fully Convolutional Network
Journal Article
Classification for High Resolution Remote Sensing Imagery Using a Fully Convolutional Network
2017
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Overview
As a variant of Convolutional Neural Networks (CNNs) in Deep Learning, the Fully Convolutional Network (FCN) model achieved state-of-the-art performance for natural image semantic segmentation. In this paper, an accurate classification approach for high resolution remote sensing imagery based on the improved FCN model is proposed. Firstly, we improve the density of output class maps by introducing Atrous convolution, and secondly, we design a multi-scale network architecture by adding a skip-layer structure to make it capable for multi-resolution image classification. Finally, we further refine the output class map using Conditional Random Fields (CRFs) post-processing. Our classification model is trained on 70 GF-2 true color images, and tested on the other 4 GF-2 images and 3 IKONOS true color images. We also employ object-oriented classification, patch-based CNN classification, and the FCN-8s approach on the same images for comparison. The experiments show that compared with the existing approaches, our approach has an obvious improvement in accuracy. The average precision, recall, and Kappa coefficient of our approach are 0.81, 0.78, and 0.83, respectively. The experiments also prove that our approach has strong applicability for multi-resolution image classification.
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