Image Processing and Pattern Recognition (IPPR) is receiving new impulse from the progress of Instruction Level Parallel (ILP) architectures which in general exhibit a level of performance comparable with that of the previous decade supercomputers. However, in spite of the huge computing power in principle available, it is a common experience that ILP efficiency in IPPR turns out to be low. In this paper we describe the sources of inefficiency of ILP in IPPR and define a set of indices that allows analyzing them quantitatively. The quantitative analysis of the sources of inefficiency can be used by applications software developers to identify the most convenient coding solutions for IPPR algorithms (e.g. loop unrolling, loop permutation, re...
Many image-processing applications require special-purpose hardware to run in real time. Others can ...
Performance models are presented for affordable paral-lel processing of images. A generic topology i...
We describe a project that integrates applications requirements, parallel algorithm design, models o...
RISC Instruction Level Parallel systems are today the most commonly used high performance computing ...
RISC instruction level parallel systems are today the most commonly used high performance computing ...
In this paper we show how an extensive library of data parallel low level image processing operation...
Image processing is widely used in many applications, including medical imaging, industrial manufact...
In this paper, we compare the Redundant Boundary Computation (RBC) algorithm for convolution with tr...
Parallel computers hold enormous promise for achieving high performance at a reasonable cost for man...
http://deepblue.lib.umich.edu/bitstream/2027.42/6722/5/bad0136.0001.001.pdfhttp://deepblue.lib.umich...
Current microprocessors exploit high levels of instruction-level parallelism (ILP). This thesis pres...
The inherent instruction-level parallelism (ILP) of current applications (specially those based on f...
For decades, researchers have been developing algorithms for image processing pipelines. Image Proc...
Masters ThesisCurrent microprocessors exploit high levels of instruction-level parallelism (ILP). Th...
The aim of this paper is to present a comparative analysis of the execution times of low-level visio...
Many image-processing applications require special-purpose hardware to run in real time. Others can ...
Performance models are presented for affordable paral-lel processing of images. A generic topology i...
We describe a project that integrates applications requirements, parallel algorithm design, models o...
RISC Instruction Level Parallel systems are today the most commonly used high performance computing ...
RISC instruction level parallel systems are today the most commonly used high performance computing ...
In this paper we show how an extensive library of data parallel low level image processing operation...
Image processing is widely used in many applications, including medical imaging, industrial manufact...
In this paper, we compare the Redundant Boundary Computation (RBC) algorithm for convolution with tr...
Parallel computers hold enormous promise for achieving high performance at a reasonable cost for man...
http://deepblue.lib.umich.edu/bitstream/2027.42/6722/5/bad0136.0001.001.pdfhttp://deepblue.lib.umich...
Current microprocessors exploit high levels of instruction-level parallelism (ILP). This thesis pres...
The inherent instruction-level parallelism (ILP) of current applications (specially those based on f...
For decades, researchers have been developing algorithms for image processing pipelines. Image Proc...
Masters ThesisCurrent microprocessors exploit high levels of instruction-level parallelism (ILP). Th...
The aim of this paper is to present a comparative analysis of the execution times of low-level visio...
Many image-processing applications require special-purpose hardware to run in real time. Others can ...
Performance models are presented for affordable paral-lel processing of images. A generic topology i...
We describe a project that integrates applications requirements, parallel algorithm design, models o...