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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
1

The Optimal Design for Action Recognition Algorithm on Cell Processor Architecture

Pan, Po-Hsun 23 August 2011 (has links)
In recent years, automatic human action recognition has been widely researched within the computer vision and image processing communities. To identify human behavior which achieve the surveillance has great help by video automation in aspect of home caring, personal property and homeland security. To achieve action recognition, there are many factors to be considered, primarily the accuracy and real-time. If we can parallelize the action recognition algorithm, it will be a greatly improvement to the real-time processing capability of the algorithm. To achieve real-time demand, we study how to implement action recognition algorithm parallelization in the CELL B.E. platform. The action recognition algorithm with our design is faster than the original algorithm; it has 231 times speed up. We found that in the action recognition algorithm, there are many repeated operation between blocks, it can be parallelize by using single-instruction multiple-data architecture. In the action recognition algorithms, there are four major algorithms, DMASKS, HMHHb, MGD, SVM. The SIMD instructions in CELL B.E. platform can compute 128 bits data at once. While doing DMASKS, SIMD parallelism can reach 16 times, HMHHb parallelism up to 128 times, MGD parallelism up to 8 times, and SVM can reach 4 times. Based on CELL B.E. acceleration mechanism, we achieve high-performance computing models with multi-threading and multiple streaming. Our study showed that the action recognition algorithm is very suitable for multi-core system with parallel processing SIMD architecture. The parallelization for action recognition algorithm will have more immediate response in identifying human action. With the advantages of real-time, it can be expected to include more complex algorithms for the accuracy of algorithm in the future, to achieve both immediacy and accuracy.
2

Parallelizing Digital Signal Processing for GPU

Ekstam Ljusegren, Hannes, Jonsson, Hannes January 2020 (has links)
Because of the increasing importance of signal processing in today's society, there is a need to easily experiment with new ways to process signals. Usually, fast-performing digital signal processing is done with special-purpose hardware that are difficult to develop for. GPUs pose an alternative for fast performing digital signal processing. The work in this thesis is an analysis and implementation of a GPU version of a digital signal processing chain provided by SAAB. Through an iterative process of development and testing, a final implementation was achieved. Two benchmarks, both comprised of 4.2 M test samples, were made to compare the CPU implementation with the GPU implementation. The benchmark was run on three different platforms: a desktop computer, a NVIDIA Jetson AGX Xavier and a NVIDIA Jetson TX2. The results show that the parallelized version can reach several magnitudes higher throughput than the CPU implementation.

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