We present Capacitivo, a contact-based object recognition technique developed for interactive fabrics, using capacitive sensing. Unlike prior work that has focused on metallic objects, our technique recognizes non-metallic objects such as food, different types of fruits, liquids, and other types of objects that are often found around a home or in a workplace. To demonstrate our technique, we created a prototype composed of a 12 x 12 grid of electrodes, made from conductive fabric attached to a textile substrate. We designed the size and separation between the electrodes to maximize the sensing area and sensitivity. We then used a 10-person study to evaluate the performance of our sensing technique using 20 different objects, which yielded a 94.5% accuracy rate. We conclude this work by presenting several different application scenarios to demonstrate unique interactions that are enabled by our technique on fabrics.
CITATION STYLE
Wu, T. Y., Tan, L., Zhang, Y., Seyed, T., & Yang, X. D. (2020). Capacitivo: Contact-based object recognition on interactive fabrics using capacitive sensing. In UIST 2020 - Proceedings of the 33rd Annual ACM Symposium on User Interface Software and Technology (pp. 649–661). Association for Computing Machinery, Inc. https://doi.org/10.1145/3379337.3415829
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