[3] Zhao J, Liu H, Feng Y et al. BE-SIFT: a more brief and efficient SIFT image matching algorithm for computer vision. [C]// IEEE International Conference on Computer & Information Technology Ubiquitous Computing & Communications Dependable. IEEE, 568-574(2015).
[4] Li Y, Liu L S, Wang L H et al. Fast SIFT algorithm based on Sobel edge detector[C]//2012 2nd International Conference on Consumer Electronics, Communications and Networks (CECNet), April 21-23, 2012, Yichang, China., 1820-1823(2012).
[5] Li H Y, Wang Q. A real-time SIFT feature extraction algorithm[J]. Journal of Astronautics, 38, 865-871(2017).
[6] Bay H, Ess A, Tuytelaars T et al. Speeded-up robust features (SURF)[J]. Computer Vision and Image Understanding, 110, 346-359(2008).
[7] Wang B L, Zhu Z L, Meng L. CUDA-based acceleration algorithm of SIFT feature extraction[J]. Journal of Northeastern University (Natural Science), 34, 200-204(2013).
[8] Du C Y, Yuan J L, Dong J S et al. GPU based parallel optimization for real time panoramic video stitching[J]. Pattern Recognition Letters, 133, 62-69(2018).
[9] Acharya K A, Venkatesh Babu R, Vadhiyar S S. A real-time implementation of SIFT using GPU[J]. Journal of Real-Time Image Processing, 14, 267-277(2018).
[10] Wu C C[2020-05-11]. SiftGPU: a GPU implementation of scale invariant feature transform (SIFT)[2020-05-11].https://github.com/stanley0614/SiftGPU..