Cross-Modal Zero-Shot-Learning for Tactile Object Recognition

In this paper, we address the learning problem of classifying untouched tactile instance with the help of visual modality. The proposed method is based on dictionary learning and we impose different penalty terms on coding vectors between visual and tactile modalities. Using such structured coding vectors, the visual-tactile cross-modal transfer can be achieved. A set of optimization algorithms are developed to obtain the solutions of the proposed optimization problems. After then, we can use the obtained dictionary to predict the coding vectors of the new untouched tactile samples and further determine its label. Finally, we perform extensive experimental evaluations on publicly available datasets to show the effectiveness of the proposed method.

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