Title
Remote Sensing Image Augmentation Based On Text Description For Waterside Change Detection
Abstract
Since remote sensing images are difficult to obtain and need to go through a complicated administrative procedure for use in China, it cannot meet the requirement of huge training samples for Waterside Change Detection based on deep learning. Recently, data augmentation has become an effective method to address the issue of an absence of training samples. Therefore, an improved Generative Adversarial Network (GAN), i.e., BTD-sGAN (Text-based Deeply-supervised GAN), is proposed to generate training samples for remote sensing images of Anhui Province, China. The principal structure of our model is based on Deeply-supervised GAN(D-sGAN), and D-sGAN is improved from the point of the diversity of the generated samples. First, the network takes Perlin Noise, image segmentation graph, and encoded text vector as input, in which the size of image segmentation graph is adjusted to 128 x 128 to facilitate fusion with the text vector. Then, to improve the diversity of the generated images, the text vector is used to modify the semantic loss of the downsampled text. Finally, to balance the time and quality of image generation, only a two-layer Unet++ structure is used to generate the image. Herein, "Inception Score", "Human Rank", and "Inference Time" are used to evaluate the performance of BTD-sGAN, StackGAN++, and GAN-INT-CLS. At the same time, to verify the diversity of the remote sensing images generated by BTD-sGAN, this paper compares the results when the generated images are sent to the remote sensing interpretation network and when the generated images are not added; the results show that the generated image can improve the precision of soil-moving detection by 5%, which proves the effectiveness of the proposed model.
Year
DOI
Venue
2021
10.3390/rs13101894
REMOTE SENSING
Keywords
DocType
Volume
data augmentation, deeply monitoring, GAN, remote sensing image, text description
Journal
13
Issue
Citations 
PageRank 
10
0
0.34
References 
Authors
0
7
Name
Order
Citations
PageRank
Chen Chen102.37
Hongxiang Ma200.68
Guorun Yao300.34
Ning Lv43111.32
Hua Yang500.34
Cong Li600.34
Shaohua Wan738248.34