Zuria Bauer
Zuria Bauer
PhD in Computer Science, University of Alicante
Verified email at - Homepage
Cited by
Cited by
Enhancing perception for the visually impaired with deep learning techniques and low-cost wearable sensors
Z Bauer, A Dominguez, E Cruz, F Gomez-Donoso, S Orts-Escolano, ...
Pattern Recognition Letters 137, 27-36, 2020
UASOL, a large-scale high-resolution outdoor stereo dataset
Z Bauer, F Gomez-Donoso, E Cruz, S Orts-Escolano, M Cazorla
Scientific Data 6 (1), 1-14, 2019
Geoffrey: an automated schedule system on a social robot for the intellectually challenged
E Cruz, F Escalona, Z Bauer, M Cazorla, J Garcia-Rodriguez, ...
Computational intelligence and neuroscience 2018, 2018
Finding the Place: How to Train and Use Convolutional Neural Networks for a Dynamically Learning Robot
E Cruz, JC Rangel, F Gomez-Donoso, Z Bauer, M Cazorla, ...
2018 International Joint Conference on Neural Networks (IJCNN), 1-8, 2018
Improving the 3D Perception of the Pepper Robot Using Depth Prediction from Monocular Frames
Z Bauer, F Escalona, E Cruz, M Cazorla, F Gomez-Donoso
Workshop of Physical Agents, 132-146, 2018
Refining the Fusion of Pepper Robot and Estimated Depth Maps Method for Improved 3D Perception
Z Bauer, F Escalona, E Cruz, M Cazorla, F Gomez-Donoso
IEEE Access 7, 185076-185085, 2019
NVS-MonoDepth: Improving Monocular Depth Prediction with Novel View Synthesis
Z Bauer, Z Li, S Orts-Escolano, M Cazorla, M Pollefeys, MR Oswald
2021 International Conference on 3D Vision (3DV), 848-858, 2022
COMBAHO: A deep learning system for integrating brain injury patients in society
J Garcia-Rodriguez, F Gomez-Donoso, S Oprea, A Garcia-Garcia, ...
Pattern Recognition Letters 137, 80-90, 2020
Semantic Localization of a Robot in a Real Home
E Cruz, Z Bauer, JC Rangel, M Cazorla, F Gomez-Donoso
Workshop of Physical Agents, 3-15, 2018
Monocular Depth Estimation: Datasets, Methods, and Applications
Z Bauer
Universitat d'Alacant-Universidad de Alicante, 2021
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