Towards compressive information processing systems
This proposal targets the emerging frontier research field of compressive sampling (CS), and particularly its application in the framework of complex information processing systems, including several related innovative and unconve...
ver más
¿Tienes un proyecto y buscas un partner? Gracias a nuestro motor inteligente podemos recomendarte los mejores socios y ponerte en contacto con ellos. Te lo explicamos en este video
Proyectos interesantes
SPARTAN
Sparse Representations and Compressed Sensing Training Netwo...
3M€
Cerrado
TEC2016-75976-R
PROCESADO DE SEÑALES MULTIMODALES Y APRENDIZAJE AUTOMATICO E...
301K€
Cerrado
BES-2014-069507
PROCESADO DE INFORMACION HETEROGENEA Y SEÑALES EN GRAFOS PAR...
88K€
Cerrado
TEC2017-82807-P
TECNICAS DE PROCESADO ESTADISTICO DE SEÑAL PARA LA REDUCCION...
155K€
Cerrado
SMALL
Sparse Models Algorithms and Learning for Large Scale Data
3M€
Cerrado
Información proyecto CRISP
Líder del proyecto
POLITECNICO DI TORINO
No se ha especificado una descripción o un objeto social para esta compañía.
TRL
4-5
Presupuesto del proyecto
1M€
Fecha límite de participación
Sin fecha límite de participación.
Descripción del proyecto
This proposal targets the emerging frontier research field of compressive sampling (CS), and particularly its application in the framework of complex information processing systems, including several related innovative and unconventional aspects. Future systems will have to handle unprecedented amounts of information such as those generated in multiview video, medical and hyperspectral imaging applications, increasingly suffering from limited communication and computational resources. CS is a breakthrough technology that will have a profound impact on how these systems are conceived. It offers a viable and elegant solution, acquiring and representing an information signal through a small set of linear projections of it, allowing to dramatically reduce communication, storage and processing requirements, and is one of the topics that will dominate signal processing research in the next years. At the core of this research proposal is the concept of employing CS not only as a standalone tool, but inside an information processing system. The main challenge is to develop theory and algorithms that will allow to perform all signal manipulations typical of conventional systems directly on the linear measurements, as reconstructing the signal samples would be unfeasible due to excessive complexity. Such operations include compression, encryption, communication, reconstruction, signal analysis, information extraction and decision, and distributed signal processing, leading to a very multidisciplinary and technically challenging research agenda. Ultimately, our research aims at developing and demonstrating the fundamental tools that will fuel next-generation information processing systems with an order-of-magnitude better performance at a lower cost than today. Europe has several successful industries active in communications and signal processing. The future success of these sectors critically depends on the ability to innovate and integrate new technology.