def autoencoder_sampler(): xsamples = n_choice(xtest, 10) xrep = np.repeat(xsamples, 9, axis=0) xgen = autoencoder.predict(xrep).reshape((10, 9, 28, 28)) xsamples = xsamples.reshape((10, 1, 28, 28)) samples = np.concatenate((xsamples, xgen), axis=1) return samples
def autoencoder_sampler(): xsamples = n_choice(xtest, 10) # the number of testdata set xrep = np.repeat(xsamples, 5, axis=0) # the number of train dataset xgen = autoencoder.predict(xrep).reshape((1, 1, 15, 6)) xsamples = xsamples.reshape((1, 1, 15, 6)) x = np.concatenate((xsamples, xgen), axis=1) return x
def autoencoder_sampler(): xsamples = n_choice(xtest, 10) xrep = np.repeat(xsamples, 9, axis=0) xgen = autoencoder.predict(xrep).reshape((10, 9, 28, 28)) xsamples = xsamples.reshape((10, 1, 28, 28)) samples = np.concatenate((xsamples, xgen), axis=1) return samples
def autoencoder_sampler(): xsamples = n_choice(xtest, 10) xrep = np.repeat(xsamples, 9, axis=0) xgen = dim_ordering_unfix(autoencoder.predict(xrep)).reshape((10, 9, 3, 32, 32)) xsamples = dim_ordering_unfix(xsamples).reshape((10, 1, 3, 32, 32)) samples = np.concatenate((xsamples, xgen), axis=1) samples = samples.transpose((0, 1, 3, 4, 2)) return samples
def autoencoder_sampler(): xsamples = n_choice(xtest, 10) xrep = np.repeat(xsamples, 9, axis=0) xgen = dim_ordering_unfix(autoencoder.predict(xrep)).reshape( (10, 9, 3, 32, 32)) xsamples = dim_ordering_unfix(xsamples).reshape((10, 1, 3, 32, 32)) samples = np.concatenate((xsamples, xgen), axis=1) samples = samples.transpose((0, 1, 3, 4, 2)) return samples