Accéder directement au contenu Accéder directement à la navigation
Communication dans un congrès

Highly Scalable Monitoring System on Chip for Multi-Stream Auto-Adaptable Vision System

Abstract : The integration of multiple and technologically heterogeneous sensors (infrared, color, etc) in vision systems tend to democratize. The objective is to benefit from the multi-modal perception allowing to improve the quality and ro-bustness of challenging applications such as the advanced driver assistance, 3-D vision, inspection systems or military observation equipment. However, the multiplication of heterogeneous processing pipelines makes the design of efficient computing resources for the multi-sensor systems very arduous task. In addition to the context of latency critical application and limited power budget, the designer has often to consider the parameters of sensors varying dynamically as well as the number of active sensors used at the moment. To optimize the computing resource management, we inspire from the self-aware architectures. We propose an original on-chip monitor, completed by an observation and command network-on-chip allowing the system resources supervision and their on-the-fly adaptation. We present the evaluation of the proposed monitoring solution through FPGA implementation. We estimate the cost of the proposed solution in the terms of surface occupation and latency. And finally, we show that the proposed solution guarantees a processing of 1080p resolution frames at more than 60 fps.
Type de document :
Communication dans un congrès
Liste complète des métadonnées

Littérature citée [17 références]  Voir  Masquer  Télécharger
Contributeur : Eva Dokladalova Connectez-vous pour contacter le contributeur
Soumis le : jeudi 24 août 2017 - 11:26:48
Dernière modification le : samedi 15 janvier 2022 - 03:58:40


paper 189.pdf
Fichiers produits par l'(les) auteur(s)



Ali Isavudeen, Nicolas Ngan, Eva Dokladalova, Mohamed Akil. Highly Scalable Monitoring System on Chip for Multi-Stream Auto-Adaptable Vision System. Research in Adaptive and Convergent Systems 2017, RACS 2017, ACM SIGAPP, Sep 2017, Krakow, Poland. ⟨10.1145/3129676.3129721⟩. ⟨hal-01576878⟩



Les métriques sont temporairement indisponibles