
Laplacian Support Vector Machine for Vibration-Based Robotic Terrain Classification
Author(s) -
Wenlei Shi,
Zerui Li,
Wenjun Lv,
Yuping Wu,
Ji Chang,
Xiaochuan Li
Publication year - 2020
Publication title -
electronics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.36
H-Index - 36
ISSN - 2079-9292
DOI - 10.3390/electronics9030513
Subject(s) - artificial intelligence , support vector machine , traverse , terrain , computer science , pattern recognition (psychology) , supervised learning , machine learning , laplace operator , robot , semi supervised learning , feature extraction , mathematics , artificial neural network , geography , mathematical analysis , cartography , geodesy
The achievement of robot autonomy has environmental perception as a prerequisite. The hazards rendered from uneven, soft and slippery terrains, which are generally named non-geometric hazards, are another potential threat reducing the traversing efficient, and therefore receiving more and more attention from the robotics community. In the paper, the vibration-based terrain classification (VTC) is investigated by taking a very practical issue, i.e., lack of labels, into consideration. According to the intrinsic temporal correlation existing in the sampled terrain sequence, a modified Laplacian SVM is proposed to utilise the unlabelled data to improve the classification performance. To the best of our knowledge, this is the first paper studying semi-supervised learning problem in robotic terrain classification. The experiment demonstrates that: (1) supervised learning (SVM) achieves a relatively low classification accuracy if given insufficient labels; (2) feature-space homogeneity based semi-supervised learning (traditional Laplacian SVM) cannot improve supervised learning’s accuracy, and even makes it worse; (3) feature- and temporal-space based semi-supervised learning (modified Laplacian SVM), which is proposed in the paper, could increase the classification accuracy very significantly.