Abstract
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<p>This paper analyzes the advantage … <p>This paper analyzes the advantages and limitations of known machine learning approaches to cope with the problem of incipient rover embedding detection based on propioceptive signals. In particular, two supervised learning approaches (Support Vector Machines and Feed-forward Neural Networks) are compared to two unsupervised learning approaches (K-means and Self-Organizing Maps) in order to identify various degrees of slip (e.g. low slip, moderate slip, high slip). A real dataset collected by a single-wheel testbed available at MIT has been used to validate each strategy. The SVM algorithm achieves the best performance (accuracy >95 %). However, the SOM algorithm represents a better solution in terms of accuracy and the need of hand-labeled data for training the classifier (accuracy >84 %).</p> classifier (accuracy >84 %).</p>
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Author
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Ramon Gonzalez +
, Stefan Byttner +
, Karl Iagnemma +
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Conference
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International Conference of the ISTVS (International Society for Terrain-Vehicle Systems), Detroit, Michigan, USA, 12-14 September, 2016
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Diva
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http://hh.diva-portal.org/smash/record.jsf?searchId=1&pid=diva2:971911
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HostPublication
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Proceedings of the 8th ISTVS Americas Conference, Detroit, September 12-14, 2016. +
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PublicationType
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Conference Paper +
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Title
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Comparison of Machine Learning Approaches for Soil Embedding Detection of Planetary Exploration Rovers +
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Year
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2016 +
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Has queryThis property is a special property in this wiki.
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Publications:Comparison of Machine Learning Approaches for Soil Embedding Detection of Planetary Exploration Rovers +
, Publications:Comparison of Machine Learning Approaches for Soil Embedding Detection of Planetary Exploration Rovers +
, Publications:Comparison of Machine Learning Approaches for Soil Embedding Detection of Planetary Exploration Rovers +
, Publications:Comparison of Machine Learning Approaches for Soil Embedding Detection of Planetary Exploration Rovers +
, Publications:Comparison of Machine Learning Approaches for Soil Embedding Detection of Planetary Exploration Rovers +
, Publications:Comparison of Machine Learning Approaches for Soil Embedding Detection of Planetary Exploration Rovers +
, Publications:Comparison of Machine Learning Approaches for Soil Embedding Detection of Planetary Exploration Rovers +
, Publications:Comparison of Machine Learning Approaches for Soil Embedding Detection of Planetary Exploration Rovers +
, Publications:Comparison of Machine Learning Approaches for Soil Embedding Detection of Planetary Exploration Rovers +
, Publications:Comparison of Machine Learning Approaches for Soil Embedding Detection of Planetary Exploration Rovers +
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Categories |
Publication +
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Modification dateThis property is a special property in this wiki.
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30 September 2016 20:42:06 +
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