Speedup image spatio temporal feature extraction using GPGPU /
Ahmed Mahmoud Ahmed Mehrez
Speedup image spatio temporal feature extraction using GPGPU / تحسين سرعة استخراج الخواص الزمانية المكانية للصور باستخدام وحدة المعالجات الرسومية Ahmed Mahmoud Ahmed Mehrez ; Supervised Elsayed E. Hemayed , Ahmed Abdelfattah Morgan - Cairo : Ahmed Mahmoud Ahmed Mehrez , 2018 - 81 P. : charts , facsimiles ; 30cm
Thesis (M.Sc.) - Cairo University - Faculty of Engineering - Department of Computer Engineering
The robust representation of image features becomes fundamental to most machine vision and image registration applications. Spatio-temporal feature extraction algorithms are favored because of their robust generated features. However, they have high computational complexity. In this thesis, we propose new parallel implementations, using GPU computing, for the two most widely used Spatio-temporal feature extraction algorithms: Scale-Invariant Feature Transform (SIFT) and Speeded-Up Robust Feature (SURF). In our implementations, we solve problems with previous parallel implementations, such as load imbalance, thread synchronization, and the use of atomic operations. We compare our presented implementations to previous CPU and GPU parallel implementations of the two algorithms. Results used in Human action recognition and achieve accuracy 96% for SIFT and 94.5% for SURF
GPU Image features Parallel processing
Speedup image spatio temporal feature extraction using GPGPU / تحسين سرعة استخراج الخواص الزمانية المكانية للصور باستخدام وحدة المعالجات الرسومية Ahmed Mahmoud Ahmed Mehrez ; Supervised Elsayed E. Hemayed , Ahmed Abdelfattah Morgan - Cairo : Ahmed Mahmoud Ahmed Mehrez , 2018 - 81 P. : charts , facsimiles ; 30cm
Thesis (M.Sc.) - Cairo University - Faculty of Engineering - Department of Computer Engineering
The robust representation of image features becomes fundamental to most machine vision and image registration applications. Spatio-temporal feature extraction algorithms are favored because of their robust generated features. However, they have high computational complexity. In this thesis, we propose new parallel implementations, using GPU computing, for the two most widely used Spatio-temporal feature extraction algorithms: Scale-Invariant Feature Transform (SIFT) and Speeded-Up Robust Feature (SURF). In our implementations, we solve problems with previous parallel implementations, such as load imbalance, thread synchronization, and the use of atomic operations. We compare our presented implementations to previous CPU and GPU parallel implementations of the two algorithms. Results used in Human action recognition and achieve accuracy 96% for SIFT and 94.5% for SURF
GPU Image features Parallel processing