#!/usr/bin/env python import os import numpy as np from PIL import Image import chainer import chainer.cuda from chainer import Variable def out_generated_image(gen, dis, rows, cols, seed, dst, writer): @chainer.training.make_extension() def make_image(trainer): np.random.seed(seed) n_images = rows * cols xp = gen.xp z = Variable(xp.asarray(gen.make_hidden(n_images))) with chainer.using_config('train', False): x = gen(z) writer.add_image('img', x, trainer.updater.iteration) return make_image