Title :
Multiview Deep Learning for Land-Use Classification
Author :
Luus, F.P.S. ; Salmon, B.P. ; van den Bergh, F. ; Maharaj, B.T.J.
Author_Institution :
Dept. of Electr., Univ. of Pretoria, Pretoria, South Africa
Abstract :
A multiscale input strategy for multiview deep learning is proposed for supervised multispectral land-use classification, and it is validated on a well-known data set. The hypothesis that simultaneous multiscale views can improve composition-based inference of classes containing size-varying objects compared to single-scale multiview is investigated. The end-to-end learning system learns a hierarchical feature representation with the aid of convolutional layers to shift the burden of feature determination from hand-engineering to a deep convolutional neural network (DCNN). This allows the classifier to obtain problem-specific features that are optimal for minimizing the multinomial logistic regression objective, as opposed to user-defined features which trade optimality for generality. A heuristic approach to the optimization of the DCNN hyperparameters is used, based on empirical performance evidence. It is shown that a single DCNN can be trained simultaneously with multiscale views to improve prediction accuracy over multiple single-scale views. Competitive performance is achieved for the UC Merced data set, where the 93.48% accuracy of multiview deep learning outperforms the 85.37% accuracy of SIFT-based methods and the 90.26% accuracy of unsupervised feature learning.
Keywords :
geophysical techniques; geophysics computing; land use; learning (artificial intelligence); neural nets; pattern classification; DCNN hyperparameters optimization; Multiview Deep Learning; SIFT-based methods; UC Merced data set; composition-based in- ference; convolutional layers; deep convolutional neural network; end-to-end learning sys- tem; feature determination; hand-engineering; heuristic approach; hierarchical feature representation; multinomial logistic re- gression objective; multiple single-scale views; multiscale input strategy; problem-specific fea- tures; size-varying objects; supervised multispectral land-use classification; unsupervised feature learning; user-defined features; well-known data set; Accuracy; Machine learning; Neural networks; Neurons; Remote sensing; Storage tanks; Training; Feature extraction; neural network applications; neural network architecture; remote sensing; urban areas;
Journal_Title :
Geoscience and Remote Sensing Letters, IEEE
DOI :
10.1109/LGRS.2015.2483680