Reprint

Artificial Neural Networks and Evolutionary Computation in Remote Sensing

Edited by
January 2021
256 pages
  • ISBN978-3-03943-827-3 (Hardback)
  • ISBN978-3-03943-828-0 (PDF)

This book is a reprint of the Special Issue Artificial Neural Networks and Evolutionary Computation in Remote Sensing that was published in

Engineering
Environmental & Earth Sciences
Summary
Artificial neural networks (ANNs) and evolutionary computation methods have been successfully applied in remote sensing applications since they offer unique advantages for the analysis of remotely-sensed images. ANNs are effective in finding underlying relationships and structures within multidimensional datasets. Thanks to new sensors, we have images with more spectral bands at higher spatial resolutions, which clearly recall big data problems. For this purpose, evolutionary algorithms become the best solution for analysis. This book includes eleven high-quality papers, selected after a careful reviewing process, addressing current remote sensing problems. In the chapters of the book, superstructural optimization was suggested for the optimal design of feedforward neural networks, CNN networks were deployed for a nanosatellite payload to select images eligible for transmission to ground, a new weight feature value convolutional neural network (WFCNN) was applied for fine remote sensing image segmentation and extracting improved land-use information, mask regional-convolutional neural networks (Mask R-CNN) was employed for extracting valley fill faces, state-of-the-art convolutional neural network (CNN)-based object detection models were applied to automatically detect airplanes and ships in VHR satellite images, a coarse-to-fine detection strategy was employed to detect ships at different sizes, and a deep quadruplet network (DQN) was proposed for hyperspectral image classification.
Format
  • Hardback
License
© 2022 by the authors; CC BY-NC-ND license
Keywords
convolutional neural network; image segmentation; multi-scale feature fusion; semantic features; Gaofen 6; aerial images; land-use; Tai’an; convolutional neural networks (CNNs); feature fusion; ship detection; optical remote sensing images; convolutional neural networks (CNNs); end-to-end detection; transfer learning; remote sensing; single shot multi-box detector (SSD); You Look Only Once-v3 (YOLO-v3); Faster RCNN; convolutional neural network; semantic features; statistical features; Gaofen-2 imagery; winter wheat; post-processing; spatial distribution; Feicheng; China; light detection and ranging; LiDAR; deep learning; convolutional neural networks; CNNs; mask regional-convolutional neural networks; mask R-CNN; digital terrain analysis; resource extraction; deep learning; hyperspectral image classification; few-shot learning; quadruplet loss; dense network; dilated convolutional network; artificial neural networks; classification; superstructure optimization; mixed-inter nonlinear programming; hyperspectral images; super-resolution; SRGAN; model generalization; image downscaling; deep learning; mixed forest; multi-label segmentation; semantic segmentation; unmanned aerial vehicles; remote sensing; classification ensemble; machine learning; Sentinel-2; geographic information system (GIS); earth observation; on-board; microsat; mission; nanosat; hyperspectral images; AI on the edge; CNN