-
Notifications
You must be signed in to change notification settings - Fork 6
Commit
This commit does not belong to any branch on this repository, and may belong to a fork outside of the repository.
Merge pull request #1 from fmi-basel/dev_release
Updated notebooks, added spiking code and 3dshapes
- Loading branch information
Showing
58 changed files
with
11,352 additions
and
20,742 deletions.
There are no files selected for viewing
This file contains bidirectional Unicode text that may be interpreted or compiled differently than what appears below. To review, open the file in an editor that reveals hidden Unicode characters.
Learn more about bidirectional Unicode characters
Original file line number | Diff line number | Diff line change |
---|---|---|
|
@@ -24,3 +24,6 @@ archives/ | |
|
||
# Built Visual Studio Code Extensions | ||
*.vsix | ||
|
||
# DS_Store files | ||
**/.DS_Store |
This file contains bidirectional Unicode text that may be interpreted or compiled differently than what appears below. To review, open the file in an editor that reveals hidden Unicode characters.
Learn more about bidirectional Unicode characters
Empty file.
Empty file.
Empty file.
This file contains bidirectional Unicode text that may be interpreted or compiled differently than what appears below. To review, open the file in an editor that reveals hidden Unicode characters.
Learn more about bidirectional Unicode characters
Original file line number | Diff line number | Diff line change |
---|---|---|
@@ -0,0 +1,133 @@ | ||
from matplotlib import pyplot as plt | ||
import numpy as np | ||
import h5py | ||
import os | ||
import time | ||
from tqdm import tqdm | ||
|
||
_FACTORS_IN_ORDER = ['floor_hue', 'wall_hue', 'object_hue', 'scale', 'shape', 'orientation'] | ||
_NUM_VALUES_PER_FACTOR = {'floor_hue': 10, 'wall_hue': 10, 'object_hue': 10, 'scale': 8, 'shape': 4, 'orientation': 15} | ||
_PERMUTATIONS_PER_FACTOR = {} | ||
|
||
# generate num_vectors random vectors of dim num_dims and length at sqrt(num_dims) | ||
def sample_random_vectors(num_vectors, num_dims): | ||
""" Samples many vectors of dimension num_dims and length sqrt(num_dims) | ||
Args: | ||
num_vectors: number of vectors to sample. | ||
num_dims: dimension of vectors to sample. | ||
Returns: | ||
batch: vectors shape [batch_size,num_dims] | ||
""" | ||
vectors = np.random.normal(size=[num_vectors, num_dims]) | ||
lengths = np.sqrt(np.sum(vectors**2, axis=1)) | ||
vectors = np.sqrt(num_dims) * vectors / lengths[:, np.newaxis] | ||
# discretize vectors to the closest integer (negative values rounded down, positive values rounded up) | ||
vectors = np.round(vectors) | ||
# if any vector is all zeros, then set random coordinate to 1 | ||
vectors[np.sum(vectors**2, axis=1) == 0, np.random.randint(num_dims)] = 1 | ||
return vectors | ||
|
||
def sample_one_hot_vectors(num_vectors, num_dims): | ||
""" Samples many one-hot vectors of dimension num_dims | ||
Args: | ||
num_vectors: number of vectors to sample. | ||
num_dims: dimension of vectors to sample. | ||
Returns: | ||
batch: vectors shape [batch_size,num_dims] | ||
""" | ||
non_zero_indices = np.random.randint(num_dims, size=num_vectors) | ||
vectors = np.eye(num_dims)[non_zero_indices] | ||
# multiply random sign to each vector | ||
signs = np.random.choice([-1, 1], size=num_vectors) | ||
# select one-quarter of the vectors and multiply by 2 | ||
signs[np.random.choice(num_vectors, size=num_vectors//4)] *= 2 | ||
vectors = vectors * signs[:, np.newaxis] | ||
return vectors | ||
|
||
|
||
def get_index(factors): | ||
""" Converts factors to indices in range(num_data) | ||
Args: | ||
factors: np array shape [6,batch_size]. | ||
factors[i]=factors[i,:] takes integer values in | ||
range(_NUM_VALUES_PER_FACTOR[_FACTORS_IN_ORDER[i]]). | ||
Returns: | ||
indices: np array shape [batch_size]. | ||
""" | ||
indices = 0 | ||
base = 1 | ||
for factor, name in reversed(list(enumerate(_FACTORS_IN_ORDER))): | ||
indices += factors[factor] * base | ||
base *= _NUM_VALUES_PER_FACTOR[name] | ||
return indices | ||
|
||
|
||
def generate_trajectories(num_sequences=64000, batch_size=16): | ||
|
||
current_state = np.zeros([num_sequences, len(_FACTORS_IN_ORDER)], dtype=np.int8) | ||
trajectories = np.zeros([num_sequences, batch_size+1, len(_FACTORS_IN_ORDER)], dtype=np.int8) | ||
|
||
for k, factor in enumerate(_FACTORS_IN_ORDER): | ||
current_state[:, k] = np.random.choice(_NUM_VALUES_PER_FACTOR[factor], num_sequences) | ||
trajectories[:, 0] = current_state | ||
|
||
directions = sample_one_hot_vectors(num_sequences, len(_FACTORS_IN_ORDER)-1) | ||
directions = np.insert(directions, _FACTORS_IN_ORDER.index('shape'), 0, axis=1) | ||
|
||
for i in tqdm(range(1, batch_size+1)): | ||
for factor in _FACTORS_IN_ORDER: | ||
if factor == 'floor_hue' or factor == 'wall_hue' or factor == 'object_hue': | ||
current_state[:, _FACTORS_IN_ORDER.index(factor)] = (current_state[:, _FACTORS_IN_ORDER.index(factor)] + directions[:, _FACTORS_IN_ORDER.index(factor)]) % _NUM_VALUES_PER_FACTOR[factor] | ||
if factor == 'scale' or factor == 'orientation': | ||
current_state[:, _FACTORS_IN_ORDER.index(factor)] = np.clip(current_state[:, _FACTORS_IN_ORDER.index(factor)] + directions[:, _FACTORS_IN_ORDER.index(factor)], 0, _NUM_VALUES_PER_FACTOR[factor]-1) | ||
directions[:, _FACTORS_IN_ORDER.index(factor)] = np.where(current_state[:, _FACTORS_IN_ORDER.index(factor)] == 0, -directions[:, _FACTORS_IN_ORDER.index(factor)], directions[:, _FACTORS_IN_ORDER.index(factor)]) | ||
directions[:, _FACTORS_IN_ORDER.index(factor)] = np.where(current_state[:, _FACTORS_IN_ORDER.index(factor)] == _NUM_VALUES_PER_FACTOR[factor]-1, -directions[:, _FACTORS_IN_ORDER.index(factor)], directions[:, _FACTORS_IN_ORDER.index(factor)]) | ||
trajectories[:, i] = current_state | ||
|
||
flattened_trajectories = trajectories.reshape(-1, len(_FACTORS_IN_ORDER)).astype(np.int32) | ||
# exchange values of each factor according to _PERMUTATIONS_PER_FACTOR | ||
for i, factor in enumerate(_FACTORS_IN_ORDER): | ||
flattened_trajectories[:, i] = _PERMUTATIONS_PER_FACTOR[factor][flattened_trajectories[:, i]] | ||
indexed_trajectories = get_index(flattened_trajectories.T) | ||
|
||
return indexed_trajectories | ||
|
||
if __name__ == '__main__': | ||
data_dir = os.path.expanduser("~/data/datasets/shapes3d") | ||
if not os.path.exists(data_dir): | ||
os.makedirs(data_dir) | ||
|
||
shuffle_colors = True | ||
|
||
permutations_file_path = os.path.join(data_dir, 'permutations.npy') | ||
if shuffle_colors: | ||
trajectory_file_path = os.path.join(data_dir, 'indexed_trajectories.npy') | ||
if not os.path.exists(permutations_file_path): | ||
print('did not find permutations file, creating new shuffling of colors ...') | ||
for factor in _FACTORS_IN_ORDER: | ||
if factor == 'floor_hue' or factor == 'wall_hue' or factor == 'object_hue': | ||
_PERMUTATIONS_PER_FACTOR[factor] = np.random.permutation(_NUM_VALUES_PER_FACTOR[factor]) | ||
else: | ||
_PERMUTATIONS_PER_FACTOR[factor] = np.arange(_NUM_VALUES_PER_FACTOR[factor]) | ||
np.save(permutations_file_path, _PERMUTATIONS_PER_FACTOR) | ||
else: | ||
print('found permutations file, loading ...') | ||
_PERMUTATIONS_PER_FACTOR = np.load(permutations_file_path, allow_pickle=True).item() | ||
else: | ||
trajectory_file_path = os.path.join(data_dir, 'indexed_trajectories_no_shuffle.npy') | ||
print('not shuffling colors') | ||
_PERMUTATIONS_PER_FACTOR = {factor: np.arange(_NUM_VALUES_PER_FACTOR[factor]) for factor in _FACTORS_IN_ORDER} | ||
|
||
if os.path.exists(trajectory_file_path): | ||
print('trajectories file {} already exists, please delete it first if you want to regenerate it'.format(trajectory_file_path)) | ||
else: | ||
print("generating training data...") | ||
print("destination directory: {}".format(data_dir)) | ||
indexed_trajectories = generate_trajectories(num_sequences=64000, batch_size=16) | ||
|
||
print("saving training data...") | ||
np.save(trajectory_file_path, indexed_trajectories) | ||
print('saved trajectories to {}'.format(trajectory_file_path)) |
This file contains bidirectional Unicode text that may be interpreted or compiled differently than what appears below. To review, open the file in an editor that reveals hidden Unicode characters.
Learn more about bidirectional Unicode characters
Original file line number | Diff line number | Diff line change |
---|---|---|
@@ -0,0 +1,138 @@ | ||
import os | ||
import h5py | ||
|
||
import numpy as np | ||
import torch | ||
from torch.utils.data import Dataset, DataLoader | ||
from torchvision import transforms | ||
from torchvision.transforms import ToTensor | ||
from torch.utils.data import random_split | ||
from pytorch_lightning import LightningDataModule | ||
|
||
_FACTORS_IN_ORDER = ['floor_hue', 'wall_hue', 'object_hue', 'scale', 'shape', | ||
'orientation'] | ||
_NUM_VALUES_PER_FACTOR = {'floor_hue': 10, 'wall_hue': 10, 'object_hue': 10, | ||
'scale': 8, 'shape': 4, 'orientation': 15} | ||
|
||
class Shapes3DSequences(Dataset): | ||
|
||
def __init__(self, data_dir, images, labels, batch_size=1024, set='train', transform=None): | ||
self.data_dir = data_dir | ||
self.transform = transform | ||
|
||
self.images = images | ||
self.labels = labels | ||
|
||
self.image_shape = self.images.shape[1:] | ||
self.n_samples = self.labels.shape[0] | ||
|
||
shuffled_colors = True | ||
if shuffled_colors: | ||
indexed_trajectories = np.load(os.path.join(data_dir, 'indexed_trajectories.npy')) | ||
else: | ||
indexed_trajectories = np.load(os.path.join(data_dir, 'indexed_trajectories_no_shuffle.npy')) | ||
self.batch_size = batch_size | ||
|
||
# split indexed_trajectories into blocks of batch_size + 1 dropping any remainder | ||
n_blocks = len(indexed_trajectories) // (self.batch_size + 1) | ||
self.trajectories = indexed_trajectories[:n_blocks * (self.batch_size + 1)].reshape([-1, self.batch_size + 1]) | ||
self.trajectories = torch.from_numpy(self.trajectories) | ||
|
||
if set == 'train': | ||
self.trajectories = self.trajectories[:-30] | ||
if set == 'val': | ||
self.trajectories = self.trajectories[-30:-10] | ||
if set == 'test': | ||
self.trajectories = self.trajectories[-10:] | ||
|
||
self.num_iter = 0 | ||
self.train = set == 'train' | ||
|
||
def __len__(self): | ||
return (1000 - 1) if self.train else (len(self.trajectories) - 1) | ||
|
||
def __getitem__(self, idx): | ||
if torch.is_tensor(idx): | ||
idx = idx.tolist() | ||
|
||
if self.train: | ||
# sample a random trajectory | ||
idx = np.random.randint(len(self.trajectories) - 1) | ||
trajectory = self.trajectories[idx] | ||
ims = torch.zeros([self.batch_size + 1] + list(self.image_shape)) | ||
labels = torch.zeros([self.batch_size + 1], dtype=torch.long) | ||
for i, index in enumerate(trajectory): | ||
ims[i] = self.images[index] | ||
labels[i] = self.labels[index] | ||
|
||
if self.transform: | ||
ims = self.transform(ims) | ||
|
||
return (ims[:-1], ims[1:], ims[:-1]), (labels[:-1]) | ||
|
||
class Shapes3DDataModule(LightningDataModule): | ||
|
||
def __init__(self, data_dir, batch_size=1024, factor_to_use_as_label='shape'): | ||
super().__init__() | ||
self.data_path = data_dir | ||
self.batch_size = batch_size | ||
self.dims = (3, 64, 64) | ||
self.output_dims = (6,) | ||
|
||
self.size = (3, 64, 64) | ||
|
||
dataset = h5py.File(os.path.join(data_dir, '3dshapes.h5'), 'r') | ||
images = np.array(dataset['images']) # (480000, 64, 64, 3) | ||
factors = np.array(dataset['labels']) # (480000, 6) | ||
|
||
# convert from hdf5 to torch tensors | ||
self.images = torch.from_numpy(images) / 255.0 | ||
self.factors = torch.from_numpy(factors) | ||
|
||
# per-channel zero-mean unit-variance normalization of the images | ||
self.images = (self.images - self.images.mean(dim=(0, 1, 2))) / self.images.std(dim=(0, 1, 2)) | ||
|
||
# change to channel first | ||
self.images = self.images.permute(0, 3, 1, 2) # shape (batch_size, 3, 64, 64) | ||
self._create_labels(factor_to_use_as_label) | ||
|
||
def _create_labels(self, factor_to_use_as_label): | ||
self.factor_to_use_as_label = factor_to_use_as_label | ||
self.num_classes = _NUM_VALUES_PER_FACTOR[self.factor_to_use_as_label] | ||
|
||
factors = self.factors[:, _FACTORS_IN_ORDER.index(self.factor_to_use_as_label)] | ||
self.labels = torch.zeros([factors.shape[0]], dtype=torch.long) | ||
if self.factor_to_use_as_label == 'floor_hue' or self.factor_to_use_as_label == 'wall_hue' or self.factor_to_use_as_label == 'object_hue': | ||
self.labels = (factors * 10).long() | ||
elif self.factor_to_use_as_label == 'scale': | ||
# data values do not match the description given for this factor, hence the alternative discretization | ||
self.labels = np.digitize(factors, np.linspace(0.75, 1.25, 8)) - 1 | ||
elif self.factor_to_use_as_label == 'shape': | ||
self.labels = (factors).long() | ||
elif self.factor_to_use_as_label == 'orientation': | ||
self.labels = np.digitize(factors, np.linspace(-30, 30, 15)) - 1 | ||
|
||
return | ||
|
||
def prepare_data(self): | ||
# download, split, etc... | ||
# only called on 1 GPU | ||
pass | ||
|
||
def setup(self, stage=None): | ||
# transforms | ||
# transform = transforms.Compose([ToTensor()]) | ||
|
||
# data | ||
self.shapes3d_full = Shapes3DSequences(self.data_path, self.images, self.labels, batch_size=self.batch_size, transform=None, set='train') | ||
self.shapes3d_val = Shapes3DSequences(self.data_path, self.images, self.labels, batch_size=self.batch_size, transform=None, set='val') | ||
self.shapes3d_test = Shapes3DSequences(self.data_path, self.images, self.labels, batch_size=self.batch_size, transform=None, set='test') | ||
|
||
def train_dataloader(self): | ||
return DataLoader(self.shapes3d_full, batch_size=None, batch_sampler=None, num_workers=8, pin_memory=True, shuffle=True) | ||
|
||
def val_dataloader(self): | ||
return DataLoader(self.shapes3d_val, batch_size=None, batch_sampler=None, num_workers=8, pin_memory=True) | ||
|
||
def test_dataloader(self): | ||
return DataLoader(self.shapes3d_test, batch_size=None, batch_sampler=None, num_workers=8) |
Oops, something went wrong.