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Deep Deformable Patch Metric Learning for Person Re-identification

Deep Deformable Patch Metric Learning for Person Re-identification

by Martina Megaro | Nov 15, 2017 | Machine Learning, Visual Computing

Deep Deformable Patch Metric Learning for Person Re-identification   In this paper, we propose to learn appearance measures for patches that are combined using deformable models. November 15, 2017IEEE Transactions on Circuits and Systems for Video Technology (TCSVT)...
Interacting with Intelligent Characters in AR

Interacting with Intelligent Characters in AR

by Martina Megaro | Nov 15, 2017 | AR/VR, Visual Computing

Interacting with Intelligent Characters in AR   In this paper, we explore interacting with virtual characters in AR along real-world environments. November 15, 2017Workshop on Artificial Intelligence Meets Virtual and Augmented Worlds (AIVRAR) 2017   Authors...
Hand-to-Hand: An Intermanual Illusion of Movement

Hand-to-Hand: An Intermanual Illusion of Movement

by Martina Megaro | Nov 13, 2017 | VFX, Visual Computing

Hand-to-Hand: An Intermanual Illusion of Movement   In this paper, we explore intermanual apparent tactile motion without any object between them. November 13, 2017ACM International Conference on Multimodal Interaction (ICMI) 2017   Authors Dario Pittera (Disney...
Multimode Quasistatic Cavity Resonators for Wireless Power Transfer

Multimode Quasistatic Cavity Resonators for Wireless Power Transfer

by Martina Megaro | Oct 27, 2017 | Visual Computing, Wireless Communication and Ubiquitous Computing

Multimode Quasistatic Cavity Resonators for Wireless Power Transfer   Prior work on quasistatic cavity resonance (QSCR) showed promising results for ubiquitous WPT at room scales or larger. October 27, 2017IEEE Antennas and Wireless Propagation Letters 2017  ...
Editable Parametric Dense Foliage from 3D Capture

Editable Parametric Dense Foliage from 3D Capture

by Martina Megaro | Oct 22, 2017 | Capture, Digital Fabrication, Visual Computing

Editable Parametric Dense Foliage from 3D Capture   We present an algorithm to compute parametric models of dense foliage. October 22, 2017International Conference on Computer Vision (ICCV) 2017   Authors Gaurav Chaurasia (Disney Research) Paul Beardsley (Disney...
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