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A Multi-Sensor Fusion Framework Based on Coupled Residual Convolutional Neural Networks

Hao Li, Pedram Ghamisi, Behnood Rasti, Zhaoyan Wu, A. T. Shapiro, Michael Schultz, Alexander Zipf

2020Remote Sensing27 citationsDOIOpen Access PDF

Abstract

Multi-sensor remote sensing image classification has been considerably improved by deep learning feature extraction and classification networks. In this paper, we propose a novel multi-sensor fusion framework for the fusion of diverse remote sensing data sources. The novelty of this paper is grounded in three important design innovations: 1- a unique adaptation of the coupled residual networks to address multi-sensor data classification; 2- a smart auxiliary training via adjusting the loss function to address classifications with limited samples; and 3- a unique design of the residual blocks to reduce the computational complexity while preserving the discriminative characteristics of multi-sensor features. The proposed classification framework is evaluated using three different remote sensing datasets: the urban Houston university datasets (including Houston 2013 and the training portion of Houston 2018) and the rural Trento dataset. The proposed framework achieves high overall accuracies of 93.57%, 81.20%, and 98.81% on Houston 2013, the training portion of Houston 2018, and Trento datasets, respectively. Additionally, the experimental results demonstrate considerable improvements in classification accuracies compared with the existing state-of-the-art methods.

Topics & Concepts

Computer scienceDiscriminative modelResidualConvolutional neural networkArtificial intelligenceSensor fusionPattern recognition (psychology)Data miningRemote sensingMachine learningAlgorithmGeographyRemote-Sensing Image ClassificationAdvanced Image Fusion TechniquesRemote Sensing in Agriculture