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constrained_opt.py
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constrained_opt.py
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from __future__ import print_function
from time import time
from lib.rng import np_rng
import numpy as np
import sys
from lib import utils
from PyQt4.QtCore import *
class Constrained_OPT(QThread):
def __init__(self, opt_solver, batch_size=32, n_iters=25, topK=16, morph_steps=16, interp='linear'):
QThread.__init__(self)
self.nz = 100
self.opt_solver = opt_solver
self.topK = topK
self.max_iters = n_iters
self.fixed_iters = 150 # [hack] after 150 iterations, do not change the order of the results
self.batch_size = batch_size
self.morph_steps = morph_steps # number of intermediate frames
self.interp = interp # interpolation method
# data
self.z_seq = None # sequence of latent vector
self.img_seq = None # sequence of images
self.im0 = None # initial image
self.z0 = None # initial latent vector
self.prev_z = self.z0 # previous latent vector
# constraints
self.constraints = None
# current frames
self.current_ims = None # the images being displayed now
self.iter_count = 0
self.iter_total = 0
self.to_update = False
self.to_set_constraints = False
self.order = None
self.init_constraints() # initialize
self.init_z() # initialize latent vectors
self.just_fixed = True
self.weights = None
def is_fixed(self):
return self.just_fixed
def update_fix(self):
self.just_fixed = False
def init_z(self, frame_id=-1, image_id=-1):
nz = self.nz
n_sigma = 0.5
self.iter_total = 0
# set prev_z
if self.z_seq is not None and image_id >= 0:
image_id = image_id % self.z_seq.shape[0]
frame_id = frame_id % self.z_seq.shape[1]
print('set z as image %d, frame %d' % (image_id, frame_id))
self.prev_z = self.z_seq[image_id, frame_id]
if self.prev_z is None: # random initialization
self.z_init = np_rng.uniform(-1.0, 1.0, size=(self.batch_size, nz))
self.opt_solver.set_smoothness(0.0)
self.z_const = self.z_init
self.prev_zs = self.z_init
else: # add small noise to initial latent vector, so that we can get different results
z0_r = np.tile(self.prev_z, [self.batch_size, 1])
z0_n = np_rng.uniform(-1.0, 1.0, size=(self.batch_size, nz)) * n_sigma
self.z_init = np.clip(z0_r + z0_n, -0.99, 0.99)
self.opt_solver.set_smoothness(5.0)
self.z_const = np.tile(self.prev_z, [self.batch_size, 1])
self.prev_zs = z0_r
self.opt_solver.initialize(self.z_init)
self.just_fixed = True
def update(self): # update ui
self.to_update = True
self.to_set_constraints = True
self.iter_count = 0
self.img_seq = None
def save_constraints(self):
[im_c, mask_c, im_e, mask_e] = self.combine_constraints(self.constraints)
self.prev_im_c = im_c.copy()
self.prev_mask_c = mask_c.copy()
self.prev_im_e = im_e.copy()
self.prev_mask_e = mask_e.copy()
def init_constraints(self):
self.prev_im_c = None
self.prev_mask_c = None
self.prev_im_e = None
self.prev_mask_e = None
def combine_constraints(self, constraints):
if constraints is not None: # [hack]
# print('combine strokes')
[im_c, mask_c, im_e, mask_e] = constraints
if self.prev_im_c is None:
mask_c_f = mask_c
else:
mask_c_f = np.maximum(self.prev_mask_c, mask_c)
if self.prev_im_e is None:
mask_e_f = mask_e
else:
mask_e_f = np.maximum(self.prev_mask_e, mask_e)
if self.prev_im_c is None:
im_c_f = im_c
else:
im_c_f = self.prev_im_c.copy()
mask_c3 = np.tile(mask_c, [1, 1, im_c.shape[2]])
np.copyto(im_c_f, im_c, where=mask_c3.astype(np.bool)) # [hack]
if self.prev_im_e is None:
im_e_f = im_e
else:
im_e_f = self.prev_im_e.copy()
mask_e3 = np.tile(mask_e, [1, 1, im_e.shape[2]])
np.copyto(im_e_f, im_e, where=mask_e3.astype(np.bool))
return [im_c_f, mask_c_f, im_e_f, mask_e_f]
else:
return [self.prev_im_c, self.prev_mask_c, self.prev_im_e, self.prev_mask_e]
def set_constraints(self, constraints):
self.constraints = constraints
def get_z(self, image_id, frame_id):
if self.z_seq is not None:
image_id = image_id % self.z_seq.shape[0]
frame_id = frame_id % self.z_seq.shape[1]
return self.z_seq[image_id, frame_id]
else:
return None
def get_image(self, image_id, frame_id, useAverage=False):
if self.to_update:
if self.current_ims is None or self.current_ims.size == 0:
return None
else:
image_id = image_id % self.current_ims.shape[0]
if useAverage and self.weights is not None:
return utils.average_image(self.current_ims, self.weights) # get averages
else:
return self.current_ims[image_id]
else:
if self.img_seq is None:
return None
else:
frame_id = frame_id % self.img_seq.shape[1]
image_id = image_id % self.img_seq.shape[0]
if useAverage and self.weights is not None:
return utils.average_image(self.img_seq[:, frame_id, ...], self.weights)
else:
return self.img_seq[image_id, frame_id]
def get_images(self, frame_id):
if self.to_update:
return self.current_ims
else:
if self.img_seq is None:
return None
else:
frame_id = frame_id % self.img_seq.shape[1]
return self.img_seq[:, frame_id]
def get_num_images(self):
if self.img_seq is None:
return 0
else:
return self.img_seq.shape[0]
def get_num_frames(self):
if self.img_seq is None:
return 0
else:
return self.img_seq.shape[1]
def get_current_results(self):
return self.current_ims
def run(self): # main function
time_to_wait = 33 # 33 millisecond
while (1):
t1 = time()
if self.to_set_constraints: # update constraints
self.to_set_constraints = False
if self.constraints is not None and self.iter_count < self.max_iters:
self.update_invert(constraints=self.constraints)
self.iter_count += 1
self.iter_total += 1
if self.iter_count == self.max_iters:
self.gen_morphing(self.interp, self.morph_steps)
self.to_update = False
self.iter_count += 1
t_c = int(1000 * (time() - t1))
print('update one iteration: %03d ms' % t_c, end='\r')
sys.stdout.flush()
if t_c < time_to_wait:
self.msleep(time_to_wait - t_c)
def update_invert(self, constraints):
constraints_c = self.combine_constraints(constraints)
gx_t, z_t, cost_all = self.opt_solver.invert(constraints_c, self.z_const)
order = np.argsort(cost_all)
if self.topK > 1:
cost_sort = cost_all[order]
thres_top = 2 * np.mean(cost_sort[0:min(int(self.topK / 2.0), len(cost_sort))])
ids = cost_sort - thres_top < 1e-10
topK = np.min([self.topK, sum(ids)])
else:
topK = self.topK
order = order[0:topK]
if self.iter_total < self.fixed_iters:
self.order = order
else:
order = self.order
self.current_ims = gx_t[order]
# compute weights
cost_weights = cost_all[order]
self.weights = np.exp(-(cost_weights - np.mean(cost_weights)) / (np.std(cost_weights) + 1e-10))
self.current_zs = z_t[order]
self.emit(SIGNAL('update_image'))
def gen_morphing(self, interp='linear', n_steps=8):
if self.current_ims is None:
return
z1 = self.prev_zs[self.order]
z2 = self.current_zs
t = time()
img_seq = []
z_seq = []
for n in range(n_steps):
ratio = n / float(n_steps - 1)
z_t = utils.interp_z(z1, z2, ratio, interp=interp)
seq = self.opt_solver.gen_samples(z0=z_t)
img_seq.append(seq[:, np.newaxis, ...])
z_seq.append(z_t[:, np.newaxis, ...])
self.img_seq = np.concatenate(img_seq, axis=1)
self.z_seq = np.concatenate(z_seq, axis=1)
print('generate morphing sequence (%.3f seconds)' % (time() - t))
def reset(self):
self.prev_z = self.z0
self.init_z()
self.init_constraints()
self.just_fixed = True
self.z_seq = None
self.img_seq = None
self.constraints = None
self.current_ims = None
self.to_update = False
self.order = None
self.to_set_constraints = False
self.iter_total = 0
self.iter_count = 0
self.weights = None