Visible to the public Biblio

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2022-01-25
Lu, Lu, Duan, Pengshuai, Shen, Xukun, Zhang, Shijin, Feng, Huiyan, Flu, Yong.  2021.  Gaze-Pinch Menu: Performing Multiple Interactions Concurrently in Mixed Reality. 2021 IEEE Conference on Virtual Reality and 3D User Interfaces Abstracts and Workshops (VRW). :536—537.
Performing an interaction using gaze and pinch has been certified as an efficient interactive method in Mixed Reality, for such techniques can provide users concise and natural experiences. However, executing a task with individual interactions gradually is inefficient in some application scenarios. In this paper, we propose the Hand-Pinch Menu, which core concept is to reduce unnecessary operations by combining several interactions. Users can continuously perform multiple interactions on a selected object concurrently without changing gestures by using this technique. The user study results show that our Gaze-Pinch Menu can improve operational efficiency effectively.
2021-03-01
Davis, B., Glenski, M., Sealy, W., Arendt, D..  2020.  Measure Utility, Gain Trust: Practical Advice for XAI Researchers. 2020 IEEE Workshop on TRust and EXpertise in Visual Analytics (TREX). :1–8.
Research into the explanation of machine learning models, i.e., explainable AI (XAI), has seen a commensurate exponential growth alongside deep artificial neural networks throughout the past decade. For historical reasons, explanation and trust have been intertwined. However, the focus on trust is too narrow, and has led the research community astray from tried and true empirical methods that produced more defensible scientific knowledge about people and explanations. To address this, we contribute a practical path forward for researchers in the XAI field. We recommend researchers focus on the utility of machine learning explanations instead of trust. We outline five broad use cases where explanations are useful and, for each, we describe pseudo-experiments that rely on objective empirical measurements and falsifiable hypotheses. We believe that this experimental rigor is necessary to contribute to scientific knowledge in the field of XAI.
2019-12-17
Nguyen, Viet, Ibrahim, Mohamed, Truong, Hoang, Nguyen, Phuc, Gruteser, Marco, Howard, Richard, Vu, Tam.  2018.  Body-Guided Communications: A Low-Power, Highly-Confined Primitive to Track and Secure Every Touch. Proceedings of the 24th Annual International Conference on Mobile Computing and Networking. :353-368.

The growing number of devices we interact with require a convenient yet secure solution for user identification, authorization and authentication. Current approaches are cumbersome, susceptible to eavesdropping and relay attacks, or energy inefficient. In this paper, we propose a body-guided communication mechanism to secure every touch when users interact with a variety of devices and objects. The method is implemented in a hardware token worn on user's body, for example in the form of a wristband, which interacts with a receiver embedded inside the touched device through a body-guided channel established when the user touches the device. Experiments show low-power (uJ/bit) operation while achieving superior resilience to attacks, with the received signal at the intended receiver through the body channel being at least 20dB higher than that of an adversary in cm range.