A study of the effect of noise and occlusion on the accuracy of convolutional neural networks applied to 3D object recognition

Computer Vision and Image Understanding - Tập 164 - Trang 124-134 - 2017
Alberto Garcia-Garcia1,2, Jose Garcia-Rodriguez1,2, Sergio Orts-Escolano1,3, Sergiu Oprea1,2, Francisco Gomez-Donoso1,3, Miguel Cazorla1,3
13D Perception Lab, University of Alicante, Spain
2Department of Computer Technology, University of Alicante, Spain
3Department of Computer Science and Artificial Intelligence, University of Alicante, Spain

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