A review on machine learning in flexible surgical and interventional robots: Where we are and where we are going
Di Wu(Wuhan Ship Development & Design Institute), Emmanuel Vander Poorten(Flanders Make (Belgium)), Jens Kober(University of Stuttgart), Arianna Menciassi(Scuola Superiore Sant'Anna), Xuan Thao Ha(KU Leuven), Mouloud Ourak(KU Leuven), Paolo Fiorini(University of Verona), Jenny Dankelman(Delft University of Technology), Diego Dall’Alba(University of Verona), Wojtek Kowalczyk(Leiden University), Elena De Momi(Politecnico di Milano), Alı́cia Casals(Universitat Politècnica de Catalunya), Zhen Li(Chengdu Medical College), Renchi Zhang(Leiden University), Yao Zhang(KU Leuven), Fernando Herrera(Université de Strasbourg), Ameya Pore(University of Verona)
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