25 research outputs found

    Optimisation énergétique de processus de traitement du signal et ses applications au décodage vidéo

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    Consumer electronics offer today more and more features (video, audio, GPS, Internet) and connectivity means (multi-radio systems with WiFi, Bluetooth, UMTS, HSPA, LTE-advanced ... ). The power demand of these devices is growing for the digital part especially for the processing chip. To support this ever increasing computing demand, processor architectures have evolved with multicore processors, graphics processors (GPU) and ether dedicated hardware accelerators. However, the evolution of battery technology is itself slower. Therefore, the autonomy of embedded systems is now under a great pressure. Among the new functionalities supported by mobile devices, video services take a prominent place. lndeed, recent analyzes show that they will represent 70% of mobile Internet traffic by 2016. Accompanying this growth, new technologies are emerging for new services and applications. Among them HEVC (High Efficiency Video Coding) can double the data compression while maintaining a subjective quality equivalent to its predecessor, the H.264 standard. ln a digital circuit, the total power consumption is made of static power and dynamic power. Most of modern hardware architectures implement means to control the power consumption of the system. Dynamic Voltage and Frequency Scaling (DVFS) mainly reduces the dynamic power of the circuit. This technique aims to adapt the power of the processor (and therefore its consumption) to the actual load needed by the application. To control the static power, Dynamic Power Management (DPM or sleep modes) aims to stop the voltage supplies associated with specific areas of the chip. ln this thesis, we first present a model of the energy consumed by the circuit integrating DPM and DVFS modes. This model is generalized to multi-core integrated circuits and to a rapid prototyping tool. Thus, the optimal operating point of a circuit, i.e. the operating frequency and the number of active cores, is identified. Secondly, the HEVC application is integrated to a multicore architecture coupled with a sophisticated DVFS mechanism. We show that this application can be implemented efficiently on general purpose processors (GPP) while minimizing the power consumption. Finally, and to get further energy gain, we propose a modified HEVC decoder that is capable to tune its energy gains together with a decoding quality trade-off.Aujourd'hui, les appareils électroniques offrent de plus en plus de fonctionnalités (vidéo, audio, GPS, internet) et des connectivités variées (multi-systèmes de radio avec WiFi, Bluetooth, UMTS, HSPA, LTE-advanced ... ). La demande en puissance de ces appareils est donc grandissante pour la partie numérique et notamment le processeur de calcul. Pour répondre à ce besoin sans cesse croissant de nouvelles fonctionnalités et donc de puissance de calcul, les architectures des processeurs ont beaucoup évolué : processeurs multi-coeurs, processeurs graphiques (GPU) et autres accélérateurs matériels dédiés. Cependant, alors que de nouvelles architectures matérielles peinent à répondre aux exigences de performance, l'évolution de la technologie des batteries est quant à elle encore plus lente. En conséquence, l'autonomie des systèmes embarqués est aujourd'hui sous pression. Parmi les nouveaux services supportés par les terminaux mobiles, la vidéo prend une place prépondérante. En effet, des analyses récentes de tendance montrent qu'elle représentera 70 % du trafic internet mobile dès 2016. Accompagnant cette croissance, de nouvelles technologies émergent permettant de nouveaux services et applications. Parmi elles, HEVC (High Efficiency Video Coding) permet de doubler la compression de données tout en garantissant une qualité subjective équivalente à son prédécesseur, la norme H.264. Dans un circuit numérique, la consommation provient de deux éléments: la puissance statique et la puissance dynamique. La plupart des architectures matérielles récentes mettent en oeuvre des procédés permettant de contrôler la puissance du système. Le changement dynamique du couple tension/fréquence appelé Dynamic Voltage and Frequency Scaling (DVFS) agit principalement sur la puissance dynamique du circuit. Cette technique permet d'adapter la puissance du processeur (et donc sa consommation) à la charge réelle nécessaire pour une application. Pour contrôler la puissance statique, le Dynamic Power Management (DPM, ou modes de veille) consistant à arrêter les alimentations associées à des zones spécifiques de la puce. Dans cette thèse, nous présentons d'abord une modélisation de l'énergie consommée par le circuit intégrant les modes DVFS et DPM. Cette modélisation est généralisée au circuit multi-coeurs et intégrée à un outil de prototypage rapide. Ainsi le point de fonctionnement optimal d'un circuit, la fréquence de fonctionnement et le nombre de coeurs actifs, est identifié. Dans un second temps, l'application HEVC est intégrée à une architecture multi-coeurs avec une adaptation dynamique de la fréquence de développement. Nous montrons que cette application peut être implémentée efficacement sur des processeurs généralistes (GPP) tout en minimisant la puissance consommée. Enfin, et pour aller plus loin dans les gains en énergie, nous proposons une modification du décodeur HEVC qui permet à un décodeur de baisser encore plus sa consommation en fonction du budget énergétique disponible localement

    SLEPX: An Efficient Lightweight Cipher for Visual Protection of Scalable HEVC Extension

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    This paper proposes a lightweight cipher scheme aimed at the scalable extension of the High Efficiency Video Coding (HEVC) codec, referred to as the Scalable HEVC (SHVC) standard. This stream cipher, Symmetric Cipher for Lightweight Encryption based on Permutation and EXlusive OR (SLEPX), applies Selective Encryption (SE) over suitable coding syntax elements in the SHVC layers. This is achieved minimal computational complexity and delay. The algorithm also conserves most SHVC functionalities, i.e. preservation of bit-length, decoder format-compliance, and error resilience. For comparative analysis, results were taken and compared with other state-of-art ciphers i.e. Exclusive-OR (XOR) and the Advanced Encryption Standard (AES). The performance of SLEPX is also compared with existing video SE solutions to confirm the efficiency of the adopted scheme. The experimental results demonstrate that SLEPX is as secure as AES in terms of visual protection, while computationally efficient comparable with a basic XOR cipher. Visual quality assessment, security analysis and extensive cryptanalysis (based on numerical values of selected binstrings) also showed the effectiveness of SLEPX’s visual protection scheme for SHVC compared to previously-employed cryptographic technique

    Machine Learning for Multimedia Communications

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    Machine learning is revolutionizing the way multimedia information is processed and transmitted to users. After intensive and powerful training, some impressive efficiency/accuracy improvements have been made all over the transmission pipeline. For example, the high model capacity of the learning-based architectures enables us to accurately model the image and video behavior such that tremendous compression gains can be achieved. Similarly, error concealment, streaming strategy or even user perception modeling have widely benefited from the recent learning-oriented developments. However, learning-based algorithms often imply drastic changes to the way data are represented or consumed, meaning that the overall pipeline can be affected even though a subpart of it is optimized. In this paper, we review the recent major advances that have been proposed all across the transmission chain, and we discuss their potential impact and the research challenges that they raise

    Approximation Opportunities in Edge Computing Hardware : A Systematic Literature Review

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    With the increasing popularity of the Internet of Things and massive Machine Type Communication technologies, the number of connected devices is rising. However, while enabling valuable effects to our lives, bandwidth and latency constraints challenge Cloud processing of their associated data amounts. A promising solution to these challenges is the combination of Edge and approximate computing techniques that allows for data processing nearer to the user. This paper aims to survey the potential benefits of these paradigms’ intersection. We provide a state-of-the-art review of circuit-level and architecture-level hardware techniques and popular applications. We also outline essential future research directions.publishedVersionPeer reviewe
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