Title
Deep Learning Architectures for Soil Property Prediction
Abstract
Advances in diffuse reflectance infra-red spec-cryoscopy measurements have made it possible to estimate number of functional properties of soil inexpensively and accurately. Core to such techniques are machine learning methods that can map high-dimensional spectra to real-valued outputs. While previous works have considered predicting each property individually using simple regression methods, the correlation structure present in the output variables prompts us to consider methods that can leverage this structure to make more accurate predictions. In this paper, we leverage advances in deep learning architectures, specifically convolution neural networks and conditional restricted Boltzmann machines for structured output prediction for soil property prediction. We evaluate our methods on two recent spectral datasets, where output soil properties are shown to have a measurable degree of correlation.
Year
DOI
Venue
2015
10.1109/CRV.2015.15
CRV
Keywords
Field
DocType
deep learning, convolutional neural network, restricted Boltzmann machines, structured output, reflectance spectroscopy, soil analysis
Restricted Boltzmann machine,Boltzmann machine,Convolutional neural network,Computer science,Convolution,Simple linear regression,Artificial intelligence,Deep learning,Artificial neural network,Machine learning,Soil test
Conference
Citations 
PageRank 
References 
0
0.34
24
Authors
3
Name
Order
Citations
PageRank
Matthew Veres100.68
Griffin Lacey260.93
Graham W. Taylor31523127.22