Ejemplo n.º 1
0
        def get_list_dataset(pair_type):
            ele_list = dataset[pair_type][:len(dataset[pair_type]) //
                                          batch_size * batch_size]

            def load(idx):
                o = {
                    'input':
                    np.stack((dataset['patches'][v].astype(np.float32) -
                              dataset['mean'][v]) / 256.0 for v in idx),
                    'target':
                    1 if pair_type == 'matches' else -1
                }
                o['input'] = torch.from_numpy(o['input'])
                o['target'] = torch.LongTensor([o['target']])
                o['input'] = o['input'].float()
                o['target'] = o['target'].float()
                o['input'] = o['input'].cuda()
                o['target'] = o['target'].cuda()
                return o

            ele_list = list(map(load, ele_list))
            ds = ListDataset(elem_list=ele_list)
            # ds = ds.transform({'input': torch.from_numpy, 'target': lambda x: torch.LongTensor([x])})
            # ds = ds.transform({'input': torch.from_numpy, 'target': lambda x: torch.Cudaha([x])})

            return ds.batch(policy='include-last', batchsize=batch_size // 2)
Ejemplo n.º 2
0
    def get_list_dataset(pair_type):
        ds = ListDataset(elem_list=dataset[pair_type],
                         load=lambda idx: {'input': np.stack((dataset['patches'][v].astype(np.float32)
                                                              - dataset['mean'][v]) / 256.0 for v in idx),
                                           'target': 1 if pair_type == 'matches' else -1})
        ds = ds.transform({'input': torch.from_numpy, 'target': lambda x: torch.LongTensor([x])})

        return ds.batch(policy='include-last', batchsize=batch_size // 2)
Ejemplo n.º 3
0
    def get_list_dataset(pair_type):
        ds = ListDataset(elem_list=dataset[pair_type],
                         load=lambda idx: {
                             'input':
                             np.stack((dataset['patches'][v].astype(np.float32)
                                       - dataset['mean'][v]) / 256.0
                                      for v in idx),
                             'target':
                             1 if pair_type == 'matches' else -1
                         })
        ds = ds.transform({
            'input': torch.from_numpy,
            'target': lambda x: torch.LongTensor([x])
        })

        return ds.batch(policy='include-last', batchsize=batch_size // 2)