@article{MAKHILLRJAS201813110057, title = {Convolutional Neural Network Training for Robotic Applications in 3D Environments}, journal = {Research Journal of Applied Sciences}, volume = {13}, number = {1}, pages = {41-46}, year = {2018}, issn = {1815-932x}, doi = {rjasci.2018.41.46}, url = {https://makhillpublications.co/view-article.php?issn=1815-932x&doi=rjasci.2018.41.46}, author = {M.Robinson,S.Oscar and}, keywords = {Convolutional neural network,robotic applications,3D environment,characteristics,dynamic,information}, abstract = {This study presents two training schemes of three deep convolutional neural network architectures applied to object recognition, based on the depth information supplied for a 3D camera. For this case, the depth information allows to make the set of training images of each network, its architecture and its characteristics, generating a dynamic recognition application by variation of the image capture point. The best scheme is selected to add a weighting layer with saturationn for obtain a final architecture that recognize objects to different distances with a 91.69% success that mean a maximum error of 8.31%.} }