Innovating Works

EMERGE

Financiado
Geometry Processing as Inference
Geometry Processing is concerned with algorithms and data structures for representing and processing three-dimensional shapes. Techniques in geometry processing have been developed over the last three decades and are now driving r... Geometry Processing is concerned with algorithms and data structures for representing and processing three-dimensional shapes. Techniques in geometry processing have been developed over the last three decades and are now driving real-world applications in various industries. Geometry processing algorithms may be interpreted as components of digital signal processing or machine learning, solving inference problems: given an incomplete description of the geometry, commonly based on point samples, the concept or process underlying the observations - the surface - is recovered (unsupervised feature learning) and then may be smoothed (filtering), segmented (clustering), or interactively modified (semi-supervised learning). To facilitate these operations the surface representation is adjusted (transcoding, resampling). However, using the algorithms and data structures in geometry processing for data living in higher dimensional spaces requires fundamentally new methods in geometric computing. Emerge presents a research program aiming at making geometry processing methods available as a set of tools in data science. Emerge will introduce fundamentally new concepts for surface representations and computational methods for surface interrogation in dimension beyond three -- providing useful tools in various science and engineering disciplines. The thesis of Emerge is that the resulting extensions and generalizations of geometry processing techniques will be fruitfully complementing and adding to the state of the art in processing large amounts of data. Any progress in this direction will have profound impact, as the proliferation of sensors and data processing has led to most of the current societal challenges (climate change, global biological risks, population growth, global policy making, energy) coming with enormous amounts of unstructured quantitative data to be analyzed. ver más
31/08/2027
TUB
2M€
Duración del proyecto: 59 meses Fecha Inicio: 2022-09-01
Fecha Fin: 2027-08-31

Línea de financiación: concedida

El organismo HORIZON EUROPE notifico la concesión del proyecto el día 2022-09-01
Línea de financiación objetivo El proyecto se financió a través de la siguiente ayuda:
ERC-2021-ADG: ERC ADVANCED GRANTS
Cerrada hace 3 años
Presupuesto El presupuesto total del proyecto asciende a 2M€
Líder del proyecto
TECHNISCHE UNIVERSITAT BERLIN No se ha especificado una descripción o un objeto social para esta compañía.
Perfil tecnológico TRL 4-5