Deep-learning methods provide a promising approach for measuring in-vivo knee joint motion from fast registration of two-dimensional(2D)to three-dimensional(3D)data with a broad range of capture.However,if there are i...Deep-learning methods provide a promising approach for measuring in-vivo knee joint motion from fast registration of two-dimensional(2D)to three-dimensional(3D)data with a broad range of capture.However,if there are insufficient data for training,the data-driven approach will fail.We propose a feature-based transfer-learning method to extract features from fluoroscopic images.With three subjects and fewer than 100 pairs of real fluoroscopic images,we achieved a mean registration success rate of up to 40%.The proposed method provides a promising solution,using a learning-based registration method when only a limited number of real fluoroscopic images is available.展开更多
基金sponsored by the National Natural Science Foundation of China(31771017,31972924,81873997)the Science and Technology Commission of Shanghai Municipality(16441908700)+3 种基金the Innovation Research Plan supported by Shanghai Municipal Education Commission(ZXWF082101)the National Key R&D Program of China(2017YFC0110700,2018YFF0300504,2019YFC0120600)the Natural Science Foundation of Shanghai(18ZR1428600)the Interdisciplinary Program of Shanghai Jiao Tong University(ZH2018QNA06,YG2017MS09).
文摘Deep-learning methods provide a promising approach for measuring in-vivo knee joint motion from fast registration of two-dimensional(2D)to three-dimensional(3D)data with a broad range of capture.However,if there are insufficient data for training,the data-driven approach will fail.We propose a feature-based transfer-learning method to extract features from fluoroscopic images.With three subjects and fewer than 100 pairs of real fluoroscopic images,we achieved a mean registration success rate of up to 40%.The proposed method provides a promising solution,using a learning-based registration method when only a limited number of real fluoroscopic images is available.