# Copyright 2016-present, Facebook, Inc. # All rights reserved. # # This source code is licensed under the license found in the # LICENSE file in the root directory of this source tree. import torch import torch.legacy.nn as nn import sparseconvnet.legacy as scn from data import getIterators # Use the GPU if there is one, otherwise CPU dtype = 'torch.cuda.FloatTensor' if torch.cuda.is_available() else 'torch.FloatTensor' # two-dimensional SparseConvNet model = nn.Sequential() sparseModel = scn.Sequential() denseModel = nn.Sequential() model.add(sparseModel).add(denseModel) sparseModel.add(scn.SparseVggNet(2, 3, [ ['C', 8, ], ['C', 8], 'MP', ['C', 16], ['C', 16], 'MP', ['C', 16, 8], ['C', 16, 8], 'MP', ['C', 24, 8], ['C', 24, 8], 'MP'])) sparseModel.add(scn.Convolution(2, 32, 64, 5, 1, False)) sparseModel.add(scn.BatchNormReLU(64)) sparseModel.add(scn.SparseToDense(2)) denseModel.add(nn.View(-1, 64)) denseModel.add(nn.Linear(64, 183)) model.type(dtype) print(model) spatial_size = sparseModel.suggestInputSize(torch.LongTensor([1, 1])) print('input spatial size', spatial_size) dataset = getIterators(spatial_size, 63, 3) scn.ClassificationTrainValidate( model, dataset, {'nEpochs': 100, 'initial_LR': 0.1, 'LR_decay': 0.05, 'weightDecay': 1e-4, 'checkPoint': False})