Land Cover Classification from Multi-temporal, Multi-spectral Remotely Sensed Imagery using Patch-Based Recurrent Neural Networks
Atharva Sharma, Xiuwen Liu, Xiaojun Yang

TL;DR
This paper introduces a patch-based recurrent neural network (PB-RNN) for multi-temporal, multi-spectral remote sensing data, significantly improving land cover classification accuracy over existing pixel-based and patch-based methods.
Contribution
The paper presents a novel PB-RNN system that effectively utilizes multi-temporal, spectral, and spatial information, including cloud/shadow contamination handling, for improved land cover classification.
Findings
Achieved 97.21% classification accuracy on Florida Everglades data.
Significant accuracy improvement over pixel-based RNN and NN systems.
Demonstrated effectiveness in large-area land cover mapping.
Abstract
Sustainability of the global environment is dependent on the accurate land cover information over large areas. Even with the increased number of satellite systems and sensors acquiring data with improved spectral, spatial, radiometric and temporal characteristics and the new data distribution policy, most existing land cover datasets were derived from a pixel-based single-date multi-spectral remotely sensed image with low accuracy. To improve the accuracy, the bottleneck is how to develop an accurate and effective image classification technique. By incorporating and utilizing the complete multi-spectral, multi-temporal and spatial information in remote sensing images and considering their inherit spatial and sequential interdependence, we propose a new patch-based RNN (PB-RNN) system tailored for multi-temporal remote sensing data. The system is designed by incorporating distinctive…
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