Connecting Look and Feel: Associating the visual and tactile properties of physical materials

April 12, 2017 ยท Declared Dead ยท ๐Ÿ› Computer Vision and Pattern Recognition

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Authors Wenzhen Yuan, Shaoxiong Wang, Siyuan Dong, Edward Adelson arXiv ID 1704.03822 Category cs.CV: Computer Vision Citations 138 Venue Computer Vision and Pattern Recognition Last Checked 2 months ago
Abstract
For machines to interact with the physical world, they must understand the physical properties of objects and materials they encounter. We use fabrics as an example of a deformable material with a rich set of mechanical properties. A thin flexible fabric, when draped, tends to look different from a heavy stiff fabric. It also feels different when touched. Using a collection of 118 fabric sample, we captured color and depth images of draped fabrics along with tactile data from a high resolution touch sensor. We then sought to associate the information from vision and touch by jointly training CNNs across the three modalities. Through the CNN, each input, regardless of the modality, generates an embedding vector that records the fabric's physical property. By comparing the embeddings, our system is able to look at a fabric image and predict how it will feel, and vice versa. We also show that a system jointly trained on vision and touch data can outperform a similar system trained only on visual data when tested purely with visual inputs.
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