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Convolutional Autoencoder for Feature Extraction in Tactile Sensing

Marsela Polić, Ivona Krajačić, Nathan F. Lepora, Matko Orsag

发表年份
2019
引用次数
62

摘要

A common approach in the field of tactile robotics is the development of a new perception algorithm for each new application of existing hardware solutions. In this letter, we present a method of dimensionality reduction of an optical-based tactile sensor image output using a convolutional neural network encoder structure. Instead of using various complex perception algorithms, and/or manually choosing task-specific data features, this unsupervised feature extraction method allows simultaneous online deployment of multiple simple perception algorithms on a common set of black-box features. The method is validated on a set of benchmarking use cases. Contact object shape, edge position, orientation, and indentation depth are estimated using shallow neural networks and machine learning models. Furthermore, a contact force estimator is trained, affirming that the extracted features contain sufficient information on both spatial and mechanical characteristics of the manipulated object.

关键词

Artificial intelligenceComputer scienceAutoencoderConvolutional neural networkPattern recognition (psychology)Feature extractionTactile sensorComputer visionDimensionality reductionFeature (linguistics)

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