The combination of low-cost imaging chips and high-performance, multicore, embedded processors heralds a new era in portable vision systems. Early vision algorithms have the potential for highly data-parallel, integer execution. However, an implementation must operate within the constraints of embedded systems including low clock rate, low-power operation and with limited memory. This dissertation explores new approaches to adapt novel pixel-based vision algorithms for tomorrow's multicore embedded processors. It presents : - An adaptive, multimodal background modeling technique called Multimodal Mean that achieves high accuracy and frame rate performance with limited memory and a slow-clock, energy-efficient, integer processing core. - A...
Final thesis reportSummarization: Nowadays, one of the most important challenges in the field of Com...
Modern microcontrollers provide a 32 bit core, a rich set of peripherals and on chip memories. Howev...
Untitled Page In this thesis we study the running of the Scale Invariant Feature Transform (SIF...
The combination of low-cost imaging chips and high-performance, multicore, embedded processors heral...
This dissertation maps various kernels and applications to a spectrum of programming models and arch...
The advancement in technology continues to consume an increasing part of our lives and as we watch t...
For forty years, transistor counts on integrated circuits have doubled roughly every two years, enab...
The main objective of this thesis is to propose new methods for designing high-performance embedded ...
As emerging portable multimedia applications demand more and more computational throughput with limi...
Nowadays many-core computing platforms are widely adopted as a viable solution to accelerate compute...
The ability to gather information from images is straightforward to human, and one of the principal ...
International audienceToday, new many-core architectures strive to provide GPU-level performance wit...
The winners, as well as the organizers and sponsors of the IEEE Low-Power Computer Vision Challenge,...
Concurrently exploring both algorithmic and architectural optimizations is a new design paradigm. Th...
Over the past two decades, the use of low power Field Programmable Gate Arrays (FPGA) for the accele...
Final thesis reportSummarization: Nowadays, one of the most important challenges in the field of Com...
Modern microcontrollers provide a 32 bit core, a rich set of peripherals and on chip memories. Howev...
Untitled Page In this thesis we study the running of the Scale Invariant Feature Transform (SIF...
The combination of low-cost imaging chips and high-performance, multicore, embedded processors heral...
This dissertation maps various kernels and applications to a spectrum of programming models and arch...
The advancement in technology continues to consume an increasing part of our lives and as we watch t...
For forty years, transistor counts on integrated circuits have doubled roughly every two years, enab...
The main objective of this thesis is to propose new methods for designing high-performance embedded ...
As emerging portable multimedia applications demand more and more computational throughput with limi...
Nowadays many-core computing platforms are widely adopted as a viable solution to accelerate compute...
The ability to gather information from images is straightforward to human, and one of the principal ...
International audienceToday, new many-core architectures strive to provide GPU-level performance wit...
The winners, as well as the organizers and sponsors of the IEEE Low-Power Computer Vision Challenge,...
Concurrently exploring both algorithmic and architectural optimizations is a new design paradigm. Th...
Over the past two decades, the use of low power Field Programmable Gate Arrays (FPGA) for the accele...
Final thesis reportSummarization: Nowadays, one of the most important challenges in the field of Com...
Modern microcontrollers provide a 32 bit core, a rich set of peripherals and on chip memories. Howev...
Untitled Page In this thesis we study the running of the Scale Invariant Feature Transform (SIF...