Real-Time Parallel Implementation of SSD Stereo Vision Algorithm on CSX SIMD Architecture

Author(s):  
Fouzhan Hosseini ◽  
Amir Fijany ◽  
Saeed Safari ◽  
Ryad Chellali ◽  
Jean-Guy Fontaine
2011 ◽  
Vol 21 (10) ◽  
pp. 1547-1555 ◽  
Author(s):  
Beau J. Tippetts ◽  
Dah-Jye Lee ◽  
James K. Archibald ◽  
Kirt D. Lillywhite

2014 ◽  
Vol 2014 ◽  
pp. 1-12 ◽  
Author(s):  
Beau Tippetts ◽  
Dah Jye Lee ◽  
Kirt Lillywhite ◽  
James K. Archibald

A variety of platforms, such as micro-unmanned vehicles, are limited in the amount of computational hardware they can support due to weight and power constraints. An efficient stereo vision algorithm implemented on an FPGA would be able to minimize payload and power consumption in microunmanned vehicles, while providing 3D information and still leaving computational resources available for other processing tasks. This work presents a hardware design of the efficient profile shape matching stereo vision algorithm. Hardware resource usage is presented for the targeted micro-UV platform, Helio-copter, that uses the Xilinx Virtex 4 FX60 FPGA. Less than a fifth of the resources on this FGPA were used to produce dense disparity maps for image sizes up to 450 × 375, with the ability to scale up easily by increasing BRAM usage. A comparison is given of accuracy, speed performance, and resource usage of a census transform-based stereo vision FPGA implementation by Jin et al. Results show that the profile shape matching algorithm is an efficient real-time stereo vision algorithm for hardware implementation for resource limited systems such as microunmanned vehicles.


Electronics ◽  
2021 ◽  
Vol 10 (5) ◽  
pp. 627
Author(s):  
David Marquez-Viloria ◽  
Luis Castano-Londono ◽  
Neil Guerrero-Gonzalez

A methodology for scalable and concurrent real-time implementation of highly recurrent algorithms is presented and experimentally validated using the AWS-FPGA. This paper presents a parallel implementation of a KNN algorithm focused on the m-QAM demodulators using high-level synthesis for fast prototyping, parameterization, and scalability of the design. The proposed design shows the successful implementation of the KNN algorithm for interchannel interference mitigation in a 3 × 16 Gbaud 16-QAM Nyquist WDM system. Additionally, we present a modified version of the KNN algorithm in which comparisons among data symbols are reduced by identifying the closest neighbor using the rule of the 8-connected clusters used for image processing. Real-time implementation of the modified KNN on a Xilinx Virtex UltraScale+ VU9P AWS-FPGA board was compared with the results obtained in previous work using the same data from the same experimental setup but offline DSP using Matlab. The results show that the difference is negligible below FEC limit. Additionally, the modified KNN shows a reduction of operations from 43 percent to 75 percent, depending on the symbol’s position in the constellation, achieving a reduction 47.25% reduction in total computational time for 100 K input symbols processed on 20 parallel cores compared to the KNN algorithm.


Author(s):  
Mario Alberto Ibarra-Manzano ◽  
Michel Devy ◽  
Jean-Louis Boizard ◽  
Pierre Lacroix ◽  
Jean-Yves Fourniols

2019 ◽  
Author(s):  
Matthew Benjamin Rogers ◽  
Robert Clark Stevens

Sign in / Sign up

Export Citation Format

Share Document